US8445198B2 - Methods, kits and devices for identifying biomarkers of treatment response and use thereof to predict treatment efficacy - Google Patents

Methods, kits and devices for identifying biomarkers of treatment response and use thereof to predict treatment efficacy Download PDF

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US8445198B2
US8445198B2 US12/151,949 US15194908A US8445198B2 US 8445198 B2 US8445198 B2 US 8445198B2 US 15194908 A US15194908 A US 15194908A US 8445198 B2 US8445198 B2 US 8445198B2
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Steen Knudsen
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Allarity Therapeutics Europe ApS
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    • C12Q1/00Measuring or testing processes involving enzymes, nucleic acids or microorganisms; Compositions therefor; Processes of preparing such compositions
    • C12Q1/68Measuring or testing processes involving enzymes, nucleic acids or microorganisms; Compositions therefor; Processes of preparing such compositions involving nucleic acids
    • C12Q1/6876Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes
    • C12Q1/6883Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes for diseases caused by alterations of genetic material
    • C12Q1/6886Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes for diseases caused by alterations of genetic material for cancer
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    • C12Q2600/106Pharmacogenomics, i.e. genetic variability in individual responses to drugs and drug metabolism
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    • C12Q2600/00Oligonucleotides characterized by their use
    • C12Q2600/178Oligonucleotides characterized by their use miRNA, siRNA or ncRNA

Abstract

The present invention features methods, kits, and devices for predicting the sensitivity of a patient to a compound or medical treatment. The invention also features methods for identifying gene biomarkers whose expression correlates to treatment sensitivity or resistance within a patient population or subpopulation.

Description

FIELD OF THE INVENTION
The invention features methods, kits, and devices for identifying biomarkers of patient sensitivity to medical treatments, e.g., sensitivity to chemotherapeutic agents, and predicting treatment efficacy using the biomarkers.
BACKGROUND OF THE INVENTION
DNA microarrays have been used to measure gene expression in tumor samples from patients and to facilitate diagnosis. Gene expression can reveal the presence of cancer in a patient, its type, stage, and origin, and whether genetic mutations are involved. Gene expression may even have a role in predicting the efficacy of chemotherapy. Over recent decades, the National Cancer Institute (NCI) has tested compounds, including chemotherapy agents, for their effect in limiting the growth of 60 human cancer cell lines. The NCI has also measured gene expression in these 60 cancer cell lines using DNA microarrays. Various studies have explored the relationship between gene expression and compound effect using the NCI datasets. Critical time is often lost due to a trial and error approach to finding an effective chemotherapy for patients with cancer. In addition, cancer cells often develop resistance to a previously effective therapy. In such situations, patient outcome could be greatly improved by early detection of such resistance.
There remains a need for proven methods and devices that predict the sensitivity or resistance of cancer patients to a medical treatment.
SUMMARY OF THE INVENTION
The invention features methods, kits, and devices for determining the sensitivity or resistance of a patient, e.g., a cancer patient, to a treatment, e.g., treatment with a compound, such as a chemotherapeutic agent, or radiation. In particular, the methods, kits, and devices can be used to determine the sensitivity or resistance of a cancer patient to any medical treatment, including, e.g., treatment with a compound, drug, or radiation. The methods, kits, and devices of the invention have been used to accurately determine treatment efficacy in cancer patients (e.g., patients with lung, lymphoma, and brain cancer) and can be used to determine treatment efficacy in patients diagnosed with any cancer.
Methods, kits, and devices for detecting the level of expression of biomarkers (e.g., genes and microRNAs) that indicate sensitivity or resistance to radiation therapy or the chemotherapy agents Vincristine, Cisplatin, Azaguanine, Etoposide, Adriamycin, Aclarubicin, Mitoxantrone, Mitomycin, Paclitaxel, Gemcitabine, Taxotere, Dexamethasone, Ara-C, Methylprednisolone, Methotrexate, Bleomycin, Methyl-GAG, Carboplatin, 5-FU (5-Fluorouracil), Rituximab, PXD101, (a histone deacetylase (HDAC) inhibitor), 5-Aza-2′-deoxycytidine (Decitabine), Melphalan, IL4-PE38 fusion protein, IL13-PE38QQR fusion protein (cintredekin besudotox), Valproic acid (VPA), All-trans retinoic acid (ATRA), Cytoxan, Topotecan (Hycamtin), Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza), Depsipeptide (FR901229), Bortezomib, Leukeran, Fludarabine, Vinblastine, Busulfan, Dacarbazine, Oxaliplatin, Hydroxyurea, Tegafur, Daunorubicin, Bleomycin, Estramustine, Chlorambucil, Mechlorethamine, Streptozocin, Carmustine, Lomustine, Mercaptopurine, Teniposide, Dactinomycin, Tretinoin, Sunitinib, SPC2996, Ifosfamide, Tamoxifen, Floxuridine, Irinotecan, and Satraplatin are also provided. The methods, kits, and devices can be used to predict the sensitivity or resistance of a subject (e.g., a cancer patient) diagnosed with a disease condition, e.g., cancer (e.g., cancers of the breast, prostate, lung and bronchus, colon and rectum, urinary bladder, skin, kidney, pancreas, oral cavity and pharynx, ovary, thyroid, parathyroid, stomach, brain, esophagus, liver and intrahepatic bile duct, cervix larynx, heart, testis, small and large intestine, anus, anal canal and anorectum, vulva, gallbladder, pleura, bones and joints, hypopharynx, eye and orbit, nose, nasal cavity and middle ear, nasopharynx, ureter, peritoneum, omentum and mesentery, or gastrointestines, as well as any form of cancer including, e.g., chronic myeloid leukemia, acute lymphocytic leukemia, non-Hodgkin's lymphoma, melanoma, carcinoma, basal cell carcinoma, malignant mesothelioma, neuroblastoma, multiple myeloma, leukemia, retinoblastoma, acute myeloid leukemia, chronic lymphocytic leukemia, Hodgkin's lymphoma, carcinoid tumors, acute tumor, or soft tissue sarcoma) to a treatment, e.g., treatment with a compound or drug, e.g., a chemotherapeutic agent, or radiation.
In a first aspect, the invention features a method of determining sensitivity of a cancer in a patient to a treatment for cancer by measuring the level of expression of at least one gene in a cell (e.g., a cancer cell) of the patient, in which the gene is selected from the group consisting of ACTB, ACTN4, ADA, ADAM9, ADAMTS1, ADD1, AF1Q, AIF1, AKAP1, AKAP13, AKR1C1, AKT1, ALDH2, ALDOC, ALG5, ALMS1, ALOX15B, AMIGO2, AMPD2, AMPD3, ANAPC5, ANP32A, ANP32B, ANXA1, AP1G2, APOBEC3B, APRT, ARHE, ARHGAP15, ARHGAP25, ARHGDIB, ARHGEF6, ARL7, ASAH1, ASPH, ATF3, ATIC, ATP2A2, ATP2A3, ATP5D, ATP5G2, ATP6V1B2, BC008967, BCAT1, BCHE, BCL11B, BDNF, BHLHB2, BIN2, BLMH, BMI1, BNIP3, BRDT, BRRN1, BTN3A3, C11orf2, C14orf139, C15orf25, C18orf10, C1orf24, C1orf29, C1orf38, C1QR1, C22orf18, C6orf32, CACNA1G, CACNB3, CALM1, CALML4, CALU, CAP350, CASP2, CASP6, CASP7, CAST, CBLB, CCNA2, CCNB1IP1, CCND3, CCR7, CCR9, CD1A, CD1C, CD1D, CD1E, CD2, CD28, CD3D, CD3E, CD3G, CD3Z, CD44, CD47, CD59, CD6, CD63, CD8A, CD8B1, CD99, CDC10, CDC14B, CDH11, CDH2, CDKL5, CDKN2A, CDW52, CECR1, CENPB, CENTB1, CENTG2, CEP1, CG018, CHRNA3, CHS1, CIAPIN1, CKAP4, CKIP-1, CNP, COL4A1, COL5A2, COL6A1, CORO1C, CRABP1, CRK, CRY1, CSDA, CTBP1, CTSC, CTSL, CUGBP2, CUTC, CXCL1, CXCR4, CXorf9, CYFIP2, CYLD, CYR61, DATF1, DAZAP1, DBN1, DBT, DCTN1, DDX18, DDX5, DGKA, DIAPH1, DKC1, DKFZP434J154, DKFZP564C186, DKFZP564G2022, DKFZp564J157, DKFZP564K0822, DNAJC10, DNAJC7, DNAPTP6, DOCK10, DOCK2, DPAGT1, DPEP2, DPYSL3, DSIPI, DUSP1, DXS9879E, EEF1B2, EFNB2, EHD2, EIF5A, ELK3, ENO2, EPAS1, EPB41L4B, ERCC2, ERG, ERP70, EVER1, EVI2A, EVL, EXT1, EZH2, F2R, FABP5, FAD104, FAM46A, FAU, FCGR2A, FCGR2C, FER1L3, FHL1, FHOD1, FKBP1A, FKBP9, FLJ10350, FLJ10539, FLJ10774, FLJ12270, FLJ13373, FLJ20859, FLJ21159, FLJ22457, FLJ35036, FLJ46603, FLNC, FLOT1, FMNL1, FNBP1, FOLH1, FOXF2, FSCN1, FTL, FYB, FYN, G0S2, G6PD, GALIG, GALNT6, GATA2, GATA3, GFPT1, GIMAP5, GIT2, GJA1, GLRB, GLTSCR2, GLUL, GMDS, GNAQ, GNB2, GNB5, GOT2, GPR65, GPRASP1, GPSM3, GRP58, GSTM2, GTF3A, GTSE1, GZMA, GZMB, H1F0, H1FX, H2AFX, H3F3A, HA-1, HEXB, HIC, HIST1H4C, HK1, HLA-A, HLA-B, HLA-DRA, HMGA1, HMGN2, HMMR, HNRPA1, HNRPD, HNRPM, HOXA9, HRMT1L1, HSA9761, HSPA5, HSU79274, HTATSF1, ICAM1, ICAM2, IER3, IFI16, IFI44, IFITM2, IFITM3, IFRG28, IGFBP2, IGSF4, IL13RA2, IL21R, IL2RG, IL4R, IL6, IL6R, IL6ST, IL8, IMPDH2, INPP5D, INSIG1, IQGAP1, IQGAP2, IRS2, ITGA5, ITM2A, JARID2, JUNB, K-ALPHA-1, KHDRBS1, KIAA0355, KIAA0802, KIAA0877, KIAA0922, KIAA1078, KIAA1128, KIAA1393, KIFC1, LAIR1, LAMB1, LAMB3, LAT, LBR, LCK, LCP1, LCP2, LEF1, LEPRE1, LGALS1, LGALS9, LHFPL2, LNK, LOC54103, LOC55831, LOC81558, LOC94105, LONP, LOX, LOXL2, LPHN2, LPXN, LRMP, LRP12, LRRC5, LRRN3, LST1, LTB, LUM, LY9, LY96, MAGEB2, MAL, MAP1B, MAP1LC3B, MAP4K1, MAPK1, MARCKS, MAZ, MCAM, MCL1, MCM5, MCM7, MDH2, MDN1, MEF2C, MFNG, MGC17330, MGC21654, MGC2744, MGC4083, MGC8721, MGC8902, MGLL, MLPH, MPHOSPH6, MPP1, MPZL1, MRP63, MRPS2, MT1E, MT1K, MUF1, MVP, MYB, MYL9, MYO1B, NAP1L1, NAP1L2, NARF, NASP, NCOR2, NDN, NDUFAB1, NDUFS6, NFKBIA, NID2, NIPA2, NME4, NME7, NNMT, NOL5A, NOL8, NOMO2, NOTCH1, NPC1, NQO1, NR1D2, NUDC, NUP210, NUP88, NVL, NXF1, OBFC1, OCRL, OGT, OXA1L, P2RX5, P4HA1, PACAP, PAF53, PAFAH1B3, PALM2-AKAP2, PAX6, PCBP2, PCCB, PFDN5, PFN1, PFN2, PGAM1, PHEMX, PHLDA1, PIM2, PITPNC1, PLACE, PLAGL1, PLAUR, PLCB1, PLEK2, PLEKHC1, PLOD2, PLSCR1, PNAS-4, PNMA2, POLR2F, PPAP2B, PRF1, PRG1, PRIM1, PRKCH, PRKCQ, PRKD2, PRNP, PRP19, PRPF8, PRSS23, PSCDBP, PSMB9, PSMC3, PSME2, PTGER4, PTGES2, PTOV1, PTP4A3, PTPN7, PTPNS1, PTRF, PURA, PWP1, PYGL, QKI, RAB3GAP, RAB7L1, RAB9P40, RAC2, RAFTLIN, RAG2, RAP1B, RASGRP2, RBPMS, RCN1, RFC3, RFC5, RGC32, RGS3, RHOH, RIMS3, RIOK3, RIPK2, RIS1, RNASE6, RNF144, RPL10, RPL10A, RPL12, RPL13A, RPL17, RPL18, RPL36A, RPLP0, RPLP2, RPS15, RPS19, RPS2, RPS4X, RPS4Y1, RRAS, RRAS2, RRBP1, RRM2, RUNX1, RUNX3, S100A4, SART3, SATB1, SCAP1, SCARB1, SCN3A, SEC31L2, SEC61G, SELL, SELPLG, SEMA4G, SEPT10, SEPT6, SERPINA1, SERPINB1, SERPINB6, SFRS5, SFRS6, SFRS7, SH2D1A, SH3GL3, SH3TC1, SHD1, SHMT2, SIAT1, SKB1, SKP2, SLA, SLC1A4, SLC20A1, SLC25A15, SLC25A5, SLC39A14, SLC39A6, SLC43A3, SLC4A2, SLC7A11, SLC7A6, SMAD3, SMOX, SNRPA, SNRPB, SOD2, SOX4, SP140, SPANXC, SPI1, SRF, SRM, SSA2, SSBP2, SSRP1, SSSCA1, STAG3, STAT1, STAT4, STAT5A, STC1, STC2, STOML2, T3JAM, TACC1, TACC3, TAF5, TAL1, TAP1, TARP, TBCA, TCF12, TCF4, TFDP2, TFPI, TIMM17A, TIMP1, TJP1, TK2, TM4SF1, TM4SF2, TM4SF8, TM6SF1, TMEM2, TMEM22, TMSB10, TMSNB, TNFAIP3, TNFAIP8, TNFRSF10B, TNFRSF1A, TNFRSF7, TNIK, TNPO1, TOB1, TOMM20, TOX, TPK1, TPM2, TRA@, TRA1, TRAM2, TRB@, TRD@, TRIM, TRIM14, TRIM22, TRIM28, TRIP13, TRPV2, TUBGCP3, TUSC3, TXN, TXNDC5, UBASH3A, UBE2A, UBE2L6, UBE2S, UCHL1, UCK2, UCP2, UFD1L, UGDH, ULK2, UMPS, UNG, USP34, USP4, VASP, VAV1, VLDLR, VWF, WASPIP, WBSCR20A, WBSCR20C, WHSC1, WNT5A, ZAP70, ZFP36L1, ZNF32, ZNF335, ZNF593, ZNFN1A1, and ZYX; in which change in the level of expression of the gene indicates the cell is sensitive or resistant to the treatment.
In an embodiment, the method further includes determining a patient's resistance or sensitivity to radiation therapy or the chemotherapy agents Vincristine, Cisplatin, Adriamycin, Etoposide, Azaguanine, Aclarubicin, Mitoxantrone, Paclitaxel, Mitomycin, Gemcitabine, Taxotere, Dexamethasone, Methylprednisolone, Ara-C, Methotrexate, Bleomycin, Methyl-GAG, Rituximab, PXD101 (a histone deacetylase (HDAC) inhibitor), 5-Aza-2′-deoxycytidine (Decitabine), Melphalan, IL4-PE38 fusion protein, IL13-PE38QQR fusion protein (cintredekin besudotox), Valproic acid (VPA), All-trans retinoic acid (ATRA), Cytoxan, Topotecan (Hycamtin), Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza), Depsipeptide (FR901229), Bortezomib, Leukeran, Fludarabine, Vinblastine, Busulfan, Dacarbazine, Oxaliplatin, Hydroxyurea, Tegafur, Daunorubicin, Bleomycin, Estramustine, Chlorambucil, Mechlorethamine, Streptozocin, Carmustine, Lomustine, Mercaptopurine, Teniposide, Dactinomycin, Tretinoin, Sunitinib, SPC2996, Ifosfamide, Tamoxifen, Floxuridine, Irinotecan, and Satraplatin by measuring the level of expression of one or more of the genes known to change (e.g., to increase or decrease) in a patient sensitive to treatment with these agents (e.g., a patient is determined to be sensitive, or likely to be sensitive, to the indicated treatment if the level of expression of one or more of the gene(s) increases or decreases relative to the level of expression of the gene(s) in a control sample (e.g., a cell or tissue) in which increased or decreased expression of the gene(s) indicates sensitivity to the treatment, and vice versa). Alternatively, a patient's resistance or sensitivity to radiation therapy or any of the chemotherapy agents listed above can be determined by measuring the level of expression of at least one microRNA in a cell (e.g., a cancer cell) known to change (e.g., the level of expression is increased or decreased) in a patient sensitive to a treatment with these agents, in which the microRNA is selected from the group consisting of ath-MIR180aNo2, Hcd102 left, Hcd111 left, Hcd115 left, Hcd120 left, Hcd142 right, Hcd145 left, Hcd148_HPR225 left, Hcd181 left, Hcd181 right, Hcd210_HPR205 right, Hcd213_HPR182 left, Hcd230 left, Hcd243 right, Hcd246 right, Hcd248 right, Hcd249 right, Hcd250 left, Hcd255 left, Hcd257 left, Hcd257 right, Hcd263 left, Hcd266 left, Hcd270 right, Hcd279 left, Hcd279 right, Hcd28_HPR39left, Hcd28_HPR39 right, Hcd282PO right, Hcd289 left, Hcd294 left, Hcd318 right, Hcd323 left, Hcd330 right, Hcd338 left, Hcd340 left, Hcd350 right, Hcd355_HPR190 left, Hcd361 right, Hcd366 left, Hcd373 right, Hcd383 left, Hcd383 right, Hcd384 left, Hcd397 left, Hcd404 left, Hcd412 left, Hcd413 right, Hcd415 right, Hcd417 right, Hcd421 right, Hcd425 left, Hcd438 right, Hcd434 right, Hcd438 left, Hcd440_HPR257 right, Hcd444 right, Hcd447 right, Hcd448 left, Hcd498 right, Hcd503 left, Hcd511 right, Hcd512 left, Hcd514 right, Hcd517 left, Hcd517 right, Hcd530 right, Hcd536_HPR104 right, Hcd542 left, Hcd544 left, Hcd547 left, Hcd559 right, Hcd562 right, Hcd569 right, Hcd570 right, Hcd578 right, Hcd581 right, Hcd586 left, Hcd586 right, Hcd587 right, Hcd605 left, Hcd605 left, Hcd605 right, Hcd608 right, Hcd627 left, Hcd631 left, Hcd631 right, Hcd634 left, Hcd642 right, Hcd649 right, Hcd654 left, Hcd658 right, Hcd669 right, Hcd674 left, Hcd678 right, Hcd683 left, Hcd684 right, Hcd689 right, Hcd690 right, Hcd691 right, Hcd693 right, Hcd697 right, Hcd704 left, Hcd704 left, Hcd712 right, Hcd716 right, Hcd731 left, Hcd738 left, Hcd739 right, Hcd739 right, Hcd749 right, Hcd753 left, Hcd754 left, Hcd755 left, Hcd760 left, Hcd763 right, Hcd768 left, Hcd768 right, Hcd770 left, Hcd773 left, Hcd777 left, Hcd778 right, Hcd781 left, Hcd781 right, Hcd782 left, Hcd783 left, Hcd788 left, Hcd794 right, Hcd796 left, Hcd799 left, Hcd807 right, Hcd812 left, Hcd817 left, Hcd817 right, Hcd829 right, Hcd852 right, Hcd861 right, Hcd863PO right, Hcd866 right, Hcd869 left, Hcd873 left, Hcd886 right, Hcd889 right, Hcd891 right, Hcd892 left, Hcd913 right, Hcd923 left, Hcd923 right, Hcd938 left, Hcd938 right, Hcd939 right, Hcd946 left, Hcd948 right, Hcd960 left, Hcd965 left, Hcd970 left, Hcd975 left, Hcd976 right, Hcd99 right, HPR100 right, HPR129 left, HPR154 left, HPR159 left, HPR163 left, HPR169 right, HPR172 right, HPR181 left, HPR187 left, HPR199 right, HPR206 left, HPR213 right, HPR214 right, HPR220 left, HPR220 right, HPR227 right, HPR232 right, HPR233 right, HPR244 right, HPR262 left, HPR264 right, HPR266 right, HPR271 right, HPR76 right, hsa_mir490_Hcd20 right, HSHELA01, HSTRNL, HUMTRAB, HUMTRF, HUMTRN, HUMTRS, HUMTRV1A, let-7f-2-prec2, mir-001b-1-prec1, mir-001b-2-prec, mir-007-1-prec, mir-007-2-precNo2, mir-010a-precNo2, mir-015b-precNo2, mir-016a-chr13, mir-016b-chr3, mir-017-precNo1, mir-017-precNo2, mir-018-prec, mir-019a-prec, mir-019b-1-prec, mir-019b-2-prec, mir-020-prec, mir-022-prec, mir-023a-prec, mir-023b-prec, mir-024-2-prec, mir-025-prec, mir-027b-prec, mir-029c-prec, mir-032-precNo2, mir-033b-prec, mir-033-prec, mir-034-precNo1, mir-034-precNo2, mir-092-prec-13=092-1No2, mir-092-prec-X=092-2, mir-093-prec-7.1=093-1, mir-095-prec-4, mir-096-prec-7No1, mir-096-prec-7No2, mir-098-prec-X, mir-099b-prec-19No1, mir-100-1/2-prec, mir-100No1, mir-101-prec-9, mir-102-prec-1, mir-103-2-prec, mir-103-prec-5=103-1, mir-106aNo1, mir-106-prec-X, mir-107No1, mir-107-prec-10, mir-122a-prec, mir-123-precNo1, mir-123-precNo2, mir-124a-1-prec1, mir-124a-2-prec, mir-124a-3-prec, mir-125b-1, mir-125b-2-precNo2, mir-127-prec, mir-128b-precNo1, mir-128b-precNo2, mir-133a-1, mir-135-2-prec, mir-136-precNo2, mir-138-1-prec, mir-140No2, mir-142-prec, mir-143-prec, mir-144-precNo2, mir-145-prec, mir-146bNo1, mir-146-prec, mir-147-prec, mir-148aNo1, mir-148-prec, mir-149-prec, mir-150-prec, mir-153-1-prec1, mir-154-prec1No1, mir-155-prec, mir-15aNo1, mir-16-1No1, mir-16-2No1, mir-181a-precNo1, mir-181b-1No1, mir-181b-2No1, mir-181b-precNo1, mir-181b-precNo2, mir-181c-precNo1, mir-181dNo1, mir-188-prec, mir-18bNo2, mir-191-prec, mir-192No2, mir-193bNo2, mir-194-2No1, mir-195-prec, mir-196-2-precNo2, mir-197-prec, mir-198-prec, mir-199a-1-prec, mir-199a-2-prec, mir-199b-precNo1, mir-200a-prec, mir-200bNo1, mir-200bNo2, mir-202*, mir-202-prec, mir-204-precNo2, mir-205-prec, mir-208-prec, mir-20bNo1, mir-212-precNo1, mir-212-precNo2, mir-213-precNo1, mir-214-prec, mir-215-precNo2, mir-216-precNo1, mir-219-2No1, mir-219-prec, mir-223-prec, mir-29b-1No1, mir-29b-2=102prec7.1=7.2, mir-321No1, mir-321No2, mir-324No1, mir-324No2, mir-328No1, mir-342No1, mir-361No1, mir-367No1, mir-370No1, mir-371No1, miR-373*No1, mir-375, mir-376aNo1, mir-379No1, mir-380-5p, mir-382, mir-384, mir-409-3p, mir-423No1, mir-424No2, mir-429No1, mir-429No2, mir-4323p, mir-4325p, mir-449No1, mir-450-1, mir-450-2No1, mir-483No1, mir-484, mir-487No1, mir-495No1, mir-499No2, mir-501No2, mir-503No1, mir-509No1, mir-514-1No2, mir-515-15p, mir-515-23p, mir-516-33p, mir-516-43p, mir-518e/526c, mir-519a-1/52, mir-519a-2No2, mir-519b, mir-519c/52, mir-520c/52, mir-526a-2No1, mir-526a-2No2, MPR103 right, MPR121 left, MPR121 left, MPR130 left, MPR130 right, MPR133 right, MPR141 left, MPR151 left, MPR156 left, MPR162 left, MPR174 left, MPR174 right, MPR185 right, MPR197 right, MPR203 left, MPR207 right, MPR215 left, MPR216 left, MPR224 left, MPR224 right, MPR228 left, MPR234 right, MPR237 left, MPR243 left, MPR244 right, MPR249 left, MPR254 right, MPR74 left, MPR88 right, and MPR95 left.
In an embodiment, the method includes determining the expression of two of the listed genes or microRNAs, more preferably three, four, five, six, seven, eight, nine, or ten of the listed genes, and most preferably twenty, thirty, forty, fifty, sixty, seventy, eighty, ninety, or one hundred or more of the listed genes. In another embodiment, the change in the level of gene or microRNA expression (e.g., an increase or decrease) is determined relative to the level of gene or microRNA expression in a cell or tissue known to be sensitive to the treatment, such that a similar level of gene or microRNA expression exhibited by a cell or tissue of the patient indicates the patient is sensitive to the treatment. In another embodiment, the change in the level of gene or microRNA expression (e.g., an increase or decrease) is determined relative to the level of gene or microRNA expression in a cell or tissue known to be resistant to the treatment, such that a similar level of gene or microRNA expression exhibited by a cell or tissue of the patient indicates the patient is resistant to the treatment.
In a second aspect, the invention features a method of determining sensitivity of a cancer in a patient to a treatment for cancer by measuring the level of expression of at least one microRNA in a cell (e.g., a cancer cell) of the patient, in which the microRNA is selected from the group set forth in the first aspect of the invention. In an embodiment, the method further includes determining a patient's resistance or sensitivity to radiation therapy or any of the chemotherapy agents set forth in the first aspect of the invention by measuring the level of expression of one or more of the microRNAs known to change (e.g., to increase or decrease) in a patient sensitive to treatment with these agents (e.g., a patient is determined to be sensitive, or likely to be sensitive, to the indicated treatment if the level of expression of one or more of the microRNA(s) increases or decreases relative to the level of expression of the microRNA(s) in a control sample (e.g., a cell or tissue) in which increased or decreased expression of the microRNA(s) indicates sensitivity to the treatment, and vice versa). In an embodiment, the method includes determining the expression of two of the listed genes or microRNAs, more preferably three, four, five, six, seven, eight, nine, or ten of the listed genes, and most preferably twenty, thirty, forty, fifty, sixty, seventy, eighty, ninety, or one hundred or more of the listed genes. In another embodiment, the change in the level of microRNA expression (e.g., an increase or decrease) is determined relative to the level of microRNA expression in a cell or tissue known to be sensitive to the treatment, such that a similar level of microRNA expression exhibited by a cell or tissue of the patient indicates the patient is sensitive to the treatment. In another embodiment, the change in the level of microRNA expression (e.g., an increase or decrease) is determined relative to the level of microRNA expression in a cell or tissue known to be resistant to the treatment, such that a similar level of microRNA expression exhibited by a cell or tissue of the patient indicates the patient is resistant to the treatment.
In another embodiment, the invention features a method for determining the development of resistance by a patient (e.g., resistance of a cell, such as a cancer cell, in the patient) to a treatment to which the patient was previously sensitive. The method includes measuring the level of expression of one or more of the microRNAs set forth in the first aspect of the invention, such that the level of expression of a microRNA which is decreased in a cell or tissue known to be sensitive to the treatment indicates that the patient is resistant to or has a propensity to become resistant to the treatment. Alternatively, a decrease in the expression level of a microRNA which is increased in a cell or tissue known to be sensitive to the treatment indicates that the patient is resistant to or has a propensity to become resistant to the treatment.
In a third aspect, the invention features a kit that includes a single-stranded nucleic acid molecule (e.g., one or a plurality thereof; e.g., a deoxyribonucleic acid molecule or a ribonucleic acid molecule) that is substantially complementary to (e.g., that has at least 80%, 90%, 95% 97%, 99%, or 100% identical to the complement of) or that is substantially identical to (e.g., that has at least 80%, 90%, 95% 97%, 99%, or 100% identity to) at least 5 consecutive nucleotides (more preferably at least 10, 15, 20, 25, 30, 35, 40, 45, 50, 55, 60, 65, 70, 75, 80, 85, 90, 95, 100, 150, 200, 250, 300, or more consecutive nucleotides; the nucleic acid can also be 5-20, 25, 5-50, 50-100, or over 100 consecutive nucleotides long) of at least one of the genes (e.g., at least 2, 3, 4, 5, 6, 7, 8, 9, 10, 20, 30, 40, 50, 60, 70, 80, 90, 100, or more of the genes) set forth in the first aspect of the invention, such that the single-stranded nucleic acid molecule is sufficient for measuring the level of expression of the gene(s) by allowing specific hybridization between the single-stranded nucleic acid molecule and a nucleic acid molecule encoded by the gene, or a complement thereof. Alternatively, the kit includes one or more single-stranded nucleic acid molecules that are substantially complementary to or substantially identical to at least 5 consecutive nucleotides of at least one of the microRNAs set forth in the first aspect of the invention, such that the single-stranded nucleic acid molecule is sufficient for measuring the level of expression of the microRNA(s) by allowing specific hybridization between the single-stranded nucleic acid molecule and the microRNA, or a complement thereof. The kit further includes instructions for applying nucleic acid molecules collected from a sample from a cancer patient (e.g., from a cell of the patient), determining the level of expression of the gene(s) or microRNA(s) hybridized to the single-stranded nucleic acid, and determining the patient's sensitivity to a treatment for cancer when use of the kit indicates that the level of expression of the gene(s) or microRNA(s) changes (e.g., increases or decreases relative to a control sample (e.g., tissue or cell) known to be sensitive or resistant to the treatment, as is discussed above in connection with the first aspect of the invention). In an embodiment, the instructions further indicate that a change in the level of expression of the gene(s) or microRNA(s) relative to the expression of the gene(s) or microRNA(s) in a control sample (e.g., a cell or tissue known to be sensitive or resistant to the treatment) indicates a change in sensitivity of the patient to the treatment (e.g., a decrease in the level of expression of a gene or microRNA known to be expressed in cells sensitive to the treatment indicates that the patient is becoming resistant to the treatment or is likely to become resistant to the treatment, and vice versa).
In another embodiment, the kit can be utilized to determine a patient's resistance or sensitivity to radiation therapy or the chemotherapy agents Vincristine, Cisplatin, Adriamycin, Etoposide, Azaguanine, Aclarubicin, Mitoxantrone, Paclitaxel, Mitomycin, Gemcitabine, Taxotere, Dexamethasone, Methylprednisolone, Ara-C, Methotrexate, Bleomycin, Methyl-GAG, Rituximab, PXD101 (a histone deacetylase (HDAC) inhibitor), 5-Aza-2′-deoxycytidine (Decitabine), Melphalan, IL4-PE38 fusion protein, IL13-PE38QQR fusion protein (cintredekin besudotox), Valproic acid (VPA), All-trans retinoic acid (ATRA), Cytoxan, Topotecan (Hycamtin), Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza), Depsipeptide (FR901229), Bortezomib, Leukeran, Fludarabine, Vinblastine, Busulfan, Dacarbazine, Oxaliplatin, Hydroxyurea, Tegafur, Daunorubicin, Bleomycin, Estramustine, Chlorambucil, Mechlorethamine, Streptozocin, Carmustine, Lomustine, Mercaptopurine, Teniposide, Dactinomycin, Tretinoin, Sunitinib, SPC2996, Ifosfamide, Tamoxifen, Floxuridine, Irinotecan, and Satraplatin by measuring the level of expression of one or more of the genes or microRNAs set forth in the first aspect of the invention and known to change (e.g., to increase or decrease) in a patient sensitive to treatment with these agents (e.g., a patient is determined to be sensitive, or likely to be sensitive, to the indicated treatment if the level of expression of one or more of the gene(s) or microRNA(s) increases or decreases relative to the level of expression of the gene(s) or microRNA(s) in a control sample (e.g., a cell or tissue) in which increased or decreased expression of the gene(s) or microRNA(s) indicates sensitivity to the treatment, and vice versa).
In another embodiment, the nucleic acid molecules are characterized by their ability to specifically identify nucleic acid molecules complementary to the genes or microRNAs in a sample collected from a cancer patient.
In a fourth aspect, the invention features a kit that includes a single-stranded nucleic acid molecule (e.g., one or a plurality thereof; e.g., a deoxyribonucleic acid molecule or a ribonucleic acid molecule) that is substantially complementary to (e.g., that has at least 80%, 90%, 95% 97%, 99%, or 100% identical to the complement of) or that is substantially identical to (e.g., that has at least 80%, 90%, 95% 97%, 99%, or 100% identity to) at least 5 consecutive nucleotides (more preferably at least 10, 15, 20, 25, 30, 35, 40, 45, 50, 55, 60, 65, 70, 75, 80, 85, 90, 95, 100, 150, 200, 250, 300, or more consecutive nucleotides; the nucleic acid can also be 5-20, 25, 5-50, 50-100, or over 100 consecutive nucleotides long) of at least one of the microRNAs (e.g., at least 2, 3, 4, 5, 6, 7, 8, 9, 10, 20, 30, 40, 50, 60, 70, 80, 90, 100, or more of the microRNAs) set forth in the first aspect of the invention, such that the single-stranded nucleic acid molecule is sufficient for measuring the level of expression of the microRNA(s) by allowing specific hybridization between the single-stranded nucleic acid molecule and a microRNA, or a complement thereof. The kit further includes instructions for applying nucleic acid molecules collected from a sample from a cancer patient (e.g., from a cell of the patient), determining the level of expression of the microRNA(s) hybridized to the single-stranded nucleic acid, and determining the patient's sensitivity to a treatment for cancer when use of the kit indicates that the level of expression of microRNA(s) changes (e.g., increases or decreases relative to a control sample (e.g., tissue or cell) known to be sensitive or resistant to the treatment, as is discussed above in connection with the first aspect of the invention). In an embodiment, the instructions further indicate that a change in the level of expression of microRNA(s) relative to the expression of microRNA(s) in a control sample (e.g., a cell or tissue known to be sensitive or resistant to the treatment) indicates a change in sensitivity of the patient to the treatment (e.g., a decrease in the level of expression of a microRNA known to be expressed in cells sensitive to the treatment indicates that the patient is becoming resistant to the treatment or is likely to become resistant to the treatment, and vice versa).
In another embodiment, the kit can be utilized to determine a patient's resistance or sensitivity to radiation therapy or the chemotherapy agents Vincristine, Cisplatin, Adriamycin, Etoposide, Azaguanine, Aclarubicin, Mitoxantrone, Paclitaxel, Mitomycin, Gemcitabine, Taxotere, Dexamethasone, Methylprednisolone, Ara-C, Methotrexate, Bleomycin, Methyl-GAG, Rituximab, PXD101 (a histone deacetylase (HDAC) inhibitor), 5-Aza-2′-deoxycytidine (Decitabine), Melphalan, IL4-PE38 fusion protein, IL13-PE38QQR fusion protein (cintredekin besudotox), Valproic acid (VPA), All-trans retinoic acid (ATRA), Cytoxan, Topotecan (Hycamtin), Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza), Depsipeptide (FR901229), Bortezomib, Leukeran, Fludarabine, Vinblastine, Busulfan, Dacarbazine, Oxaliplatin, Hydroxyurea, Tegafur, Daunorubicin, Bleomycin, Estramustine, Chlorambucil, Mechlorethamine, Streptozocin, Carmustine, Lomustine, Mercaptopurine, Teniposide, Dactinomycin, Tretinoin, Sunitinib, SPC2996, Ifosfamide, Tamoxifen, Floxuridine, Irinotecan, and Satraplatin by measuring the level of expression of one or more of the microRNAs set forth in the first aspect of the invention and known to change (e.g., to increase or decrease) in a patient sensitive to treatment with these agents (e.g., a patient is determined to be sensitive, or likely to be sensitive, to the indicated treatment if the level of expression of one or more of the microRNA(s) increases or decreases relative to the level of expression of the microRNA(s) in a control sample (e.g., a cell or tissue) in which increased or decreased expression of the or microRNA(s) indicates sensitivity to the treatment, and vice versa).
In another embodiment, the nucleic acid molecules are characterized by their ability to specifically identify nucleic acid molecules complementary to the microRNAs in a sample collected from a cancer patient.
In a fifth aspect, the invention features a method of identifying biomarkers (e.g., genes and microRNAs) indicative of sensitivity of a cancer patient to a treatment for cancer by obtaining pluralities of measurements of the expression level of a gene or microRNA (e.g., by detection of the expression of a gene or microRNA using a single probe or by using multiple probes directed to a single gene or microRNA) in different cell types and measurements of the growth of those cell types in the presence of a treatment for cancer relative to the growth of the cell types in the absence of the treatment for cancer; correlating each plurality of measurements of the expression level of the gene or microRNA in cells with the growth of the cells to obtain a correlation coefficient; selecting the median correlation coefficient calculated for the gene or microRNA; and identifying the gene or microRNA as a biomarker for use in determining the sensitivity of a cancer patient to said treatment for cancer if said median correlation coefficient exceeds 0.3 (preferably the gene or microRNA is identified as a biomarker for a patient's sensitivity to a treatment if the correlation coefficient exceeds 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 0.95, or 0.99 or more). In an embodiment, the method is performed in the presence of a second treatment.
In a sixth aspect, the invention features a method of determining sensitivity of a patient (e.g., a cancer patient) to a treatment for cancer by obtaining a measurement of the level of expression of a gene or microRNA in a sample (e.g., a cell or tissue) from the patient; applying a model predictive of sensitivity to a treatment for cancer to the measurement, in which the model is developed using an algorithm selected from the group consisting of linear sums, nearest neighbor, nearest centroid, linear discriminant analysis, support vector machines, and neural networks; and determining whether or not the patient will be responsive to the treatment for cancer. In an embodiment, the measurement is obtained by measuring the level of expression of any of the genes or microRNAs set forth in the first aspect of the invention in a cell known to be sensitive or resistant to the treatment. In another embodiment, the method is performed in the presence of a second treatment. In another embodiment, the model combines the outcomes of linear sums, linear discriminant analysis, support vector machines, neural networks, k-nearest neighbors, and nearest centroids, or the model is cross-validated using a random sample of multiple measurements. In another embodiment, treatment, e.g., a compound, has previously failed to show efficacy in a patient. In several embodiments, the linear sum is compared to a sum of a reference population with known sensitivity; the sum of a reference population is the median of the sums derived from the population members' biomarker gene expression. In another embodiment, the model is derived from the components of a data set obtained by independent component analysis or is derived from the components of a data set obtained by principal component analysis. In another embodiment, the invention features a kit, apparatus, and software used to implement the method of the sixth aspect of the invention.
In several embodiments of all aspects of the invention, the level of expression of the gene(s) is determined by measuring the level of mRNA transcribed from the gene(s), by detecting the level of a protein product of the gene(s), or by detecting the level of the biological activity of a protein product of the gene(s). In further embodiments of all aspects of the invention, an increase or decrease in the expression level of the gene(s) or microRNA(s), relative to the expression level of the gene(s) or microRNA(s) in a cell or tissue sensitive to the treatment, indicates increased sensitivity of the cancer patient to the treatment. Alternatively, an increase or decrease in the expression level of the gene(s) or microRNA(s), relative to the expression level of the gene(s) or microRNA(s) in a cell or tissue resistant to the treatment, indicates increased resistance of the cancer patient to the treatment. In another embodiment of all aspects of the invention, the cell is a cancer cell. In another embodiment of all aspects of the invention, the expression level of the gene(s) is measured using a quantitative reverse transcription-polymerase chain reaction (qRT-PCR). In an embodiment of all aspects of the invention, the level of expression of two of the listed genes or microRNAs is measured, more preferably the level of expression of three, four, five, six, seven, eight, nine, or ten of the listed genes or microRNAs is measured, and most preferably twenty, thirty, forty, fifty, sixty, seventy, eighty, ninety, or one hundred or more of the listed genes or microRNAs is measured. In another embodiment of all aspects of the invention, the expression level of the gene(s) or microRNA(s) is determined using the kit of the third or fourth aspects of the invention.
In another embodiment of all aspects of the invention, the treatment is radiation therapy or a compound, such as a chemotherapy agent selected from the group consisting of Vincristine, Cisplatin, Adriamycin, Etoposide, Azaguanine, Aclarubicin, Mitoxantrone, Paclitaxel, Mitomycin, Gemcitabine, Taxotere, Dexamethasone, Methylprednisolone, Ara-C, Methotrexate, Bleomycin, Methyl-GAG, Rituximab, PXD101 (a histone deacetylase (HDAC) inhibitor), 5-Aza-2′-deoxycytidine (Decitabine), Melphalan, IL4-PE38 fusion protein, IL13-PE38QQR fusion protein (cintredekin besudotox), Valproic acid (VPA), All-trans retinoic acid (ATRA), Cytoxan, Topotecan (Hycamtin), Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza), Depsipeptide (FR901229), Bortezomib, Leukeran, Fludarabine, Vinblastine, Busulfan, Dacarbazine, Oxaliplatin, Hydroxyurea, Tegafur, Daunorubicin, Bleomycin, Estramustine, Chlorambucil, Mechlorethamine, Streptozocin, Carmustine, Lomustine, Mercaptopurine, Teniposide, Dactinomycin, Tretinoin, Sunitinib, SPC2996, Ifosfamide, Tamoxifen, Floxuridine, Irinotecan, and Satraplatin. In another embodiment of all aspects of the invention, the treatment has previously failed to show effect in a subject (e.g., a subject selected from a subpopulation determined to be sensitive to the treatment, a subject selected from a subpopulation predicted to die without treatment, a subject selected from a subpopulation predicted to have disease symptoms without treatment, a subject selected from a subpopulation predicted to be cured without treatment.
In another embodiment of all aspects of the invention, the treatment is, e.g., administration of a compound, a protein, an antibody, an oligonucleotide, a chemotherapeutic agent, or radiation to a patient. In an embodiment of all aspects of the invention, the treatment is, e.g., a chemotherapeutic agent, such as, e.g., Vincristine, Cisplatin, Azaguanine, Etoposide, Adriamycin, Aclarubicin, Mitoxantrone, Mitomycin, Paclitaxel, Gemcitabine, Taxotere, Dexamethasone, Ara-C, Methylprednisolone, Methotrexate, Bleomycin, Methyl-GAG, Carboplatin, 5-FU (5-Fluorouracil), a histone deacetylase (HDAC) inhibitor such as PXD101, 5-Aza-2′-deoxycytidine (Decitabine), alpha emitters such as astatine-211, bismuth-212, bismuth-213, lead-212, radium-223, actinium-225, and thorium-227, beta emitters such as tritium, strontium-90, cesium-137, carbon-11, nitrogen-13, oxygen-15, fluorine-18, iron-52, cobalt-55, cobalt-60, copper-61, copper-62, copper-64, zinc-62, zinc-63, arsenic-70, arsenic-71, arsenic-74, bromine-76, bromine-79, rubidium-82, yttrium-86, zirconium-89, indium-110, iodine-120, iodine-124, iodine-129, iodine-131, iodine-125, xenon-122, technetium-94m, technetium-94, technetium-99m, and technetium-99, gamma emitters such as cobalt-60, cesium-137, and technetium-99m, Alemtuzumab, Daclizumab, Rituximab (e.g., MABTHERA™), Trastuzumab (e.g., HERCEPTIN™), Gemtuzumab, Ibritumomab, Edrecolomab, Tositumomab, CeaVac, Epratuzumab, Mitumomab, Bevacizumab, Cetuximab, Edrecolomab, Lintuzumab, MDX-210, IGN-101, MDX-010, MAb, AME, ABX-EGF, EMD 72 000, Apolizumab, Labetuzumab, ior-t1, MDX-220, MRA, H-11 scFv, Oregovomab, huJ591 MAb, BZL, Visilizumab, TriGem, TriAb, R3, MT-201, G-250, unconjugated, ACA-125, Onyvax-105, CDP-860, BrevaRex MAb, AR54, IMC-1C11, GlioMAb-H, ING-1, Anti-LCG MAbs, MT-103, KSB-303, Therex, KW-2871, Anti-HMI.24, Anti-PTHrP, 2C4 antibody, SGN-30, TRAIL-RI MAb, CAT, Prostate cancer antibody, H22×Ki-4, ABX-MA1, Imuteran, Monopharm-C, Acivicin, Aclarubicin, Acodazole Hydrochloride, Acronine, Adozelesin, Adriamycin, Aldesleukin, Altretamine, Ambomycin, A. metantrone Acetate, Aminoglutethimide, Amsacrine, Anastrozole, Anthramycin, Asparaginase, Asperlin, Azacitidine, Azetepa, Azotomycin, Batimastat, Benzodepa, Bicalutamide, Bisantrene Hydrochloride, Bisnafide Dimesylate, Bizelesin, Bleomycin Sulfate, Brequinar Sodium, Bropirimine, Busulfan, Cactinomycin, Calusterone, Camptothecin, Caracemide, Carbetimer, Carboplatin, Carmustine, Carubicin Hydrochloride, Carzelesin, Cedefingol, Chlorambucil, Cirolemycin, Cisplatin, Cladribine, Combretestatin A-4, Crisnatol Mesylate, Cyclophosphamide, Cytarabine, Dacarbazine, DACA (N-[2-(Dimethyl-amino) ethyl]acridine-4-carboxamide), Dactinomycin, Daunorubicin Hydrochloride, Daunomycin, Decitabine, Dexormaplatin, Dezaguanine, Dezaguanine Mesylate, Diaziquone, Docetaxel, Dolasatins, Doxorubicin, Doxorubicin Hydrochloride, Droloxifene, Droloxifene Citrate, Dromostanolone Propionate, Duazomycin, Edatrexate, Eflornithine Hydrochloride, Ellipticine, Elsamitrucin, Enloplatin, Enpromate, Epipropidine, Epirubicin Hydrochloride, Erbulozole, Esorubicin Hydrochloride, Estramustine, Estramustine Phosphate Sodium, Etanidazole, Ethiodized Oil I 131, Etoposide, Etoposide Phosphate, Etoprine, Fadrozole Hydrochloride, Fazarabine, Fenretinide, Floxuridine, Fludarabine Phosphate, Fluorouracil, 5-FdUMP, Fluorocitabine, Fosquidone, Fostriecin Sodium, Gemcitabine, Gemcitabine Hydrochloride, Gold Au 198, Homocamptothecin, Hydroxyurea, Idarubicin Hydrochloride, Ifosfamide, Ilmofosine, Interferon Alfa-2a, Interferon Alfa-2b, Interferon Alfa-n1, Interferon Alfa-n3, Interferon Beta-I a, Interferon Gamma-I b, Iproplatin, Irinotecan Hydrochloride, Lanreotide Acetate, Letrozole, Leuprolide Acetate, Liarozole Hydrochloride, Lometrexol Sodium, Lomustine, Losoxantrone Hydrochloride, Masoprocol, Maytansine, Mechlorethamine Hydrochloride, Megestrol Acetate, Melengestrol Acetate, Melphalan, Menogaril, Mercaptopurine, Methotrexate, Methotrexate Sodium, Metoprine, Meturedepa, Mitindomide, Mitocarcin, Mitocromin, Mitogillin, Mitomalcin, Mitomycin, Mitosper, Mitotane, Mitoxantrone Hydrochloride, Mycophenolic Acid, Nocodazole, Nogalamycin, Ormaplatin, Oxisuran, Paclitaxel, Pegaspargase, Peliomycin, Pentamustine, PeploycinSulfate, Perfosfamide, Pipobroman, Piposulfan, Piroxantrone Hydrochloride, Plicamycin, Plomestane, Porfimer Sodium, Porfiromycin, Prednimustine, Procarbazine Hydrochloride, Puromycin, Puromycin Hydrochloride, Pyrazofurin, Rhizoxin, Rhizoxin D, Riboprine, Rogletimide, Safingol, Safingol Hydrochloride, Semustine, Simtrazene, Sparfosate Sodium, Sparsomycin, Spirogermanium Hydrochloride, Spiromustine, Spiroplatin, Streptonigrin, Streptozocin, Strontium Chloride Sr 89, Sulofenur, Talisomycin, Taxane, Taxoid, Tecogalan Sodium, Tegafur, Teloxantrone Hydrochloride, Temoporfin, Teniposide, Teroxirone, Testolactone, Thiamiprine, Thioguanine, Thiotepa, Thymitaq, Tiazofurin, Tirapazamine, Tomudex, TOP53, Topotecan Hydrochloride, Toremifene Citrate, Trestolone Acetate, Triciribine Phosphate, Trimetrexate, Trimetrexate Glucuronate, Triptorelin, Tubulozole Hydrochloride, Uracil Mustard, Uredepa, Vapreotide, Verteporfin, Vinblastine, Vinblastine Sulfate, Vincristine, Vincristine Sulfate, Vindesine, Vindesine Sulfate, Vinepidine Sulfate, Vinglycinate Sulfate, Vinleurosine Sulfate, Vinorelbine Tartrate, Vinrosidine Sulfate, Vinzolidine Sulfate, Vorozole, Zeniplatin, Zinostatin, Zorubicin Hydrochloride, 2-Chlorodeoxyadenosine, 2′ Deoxyformycin, 9-aminocamptothecin, raltitrexed, N-propargyl-5,8-dideazafolic acid, 2-chloro-2′-arabino-fluoro-2′-deoxyadenosine, 2-chloro-2′-deoxyadenosine, anisomycin, trichostatin A, hPRL-G129R, CEP-751, linomide, sulfur mustard, nitrogen mustard (mechlor ethamine), cyclophosphamide, melphalan, chlorambucil, ifosfamide, busulfan, N-methyl-Nnitrosourea (MNU), N, N′-Bis(2-chloroethyl)-N-nitrosourea (BCNU), N-(2-chloroethyl)-N′ cyclohexyl-N-nitrosourea (CCNU), N-(2-chloroethyl)-N′-(trans-4-methylcyclohexyl-N-nitrosourea (MeCCNU), N-(2-chloroethyl)-N′-(diethyl)ethylphosphonate-N-nitrosourea (fotemustine), streptozotocin, diacarbazine (DTIC), mitozolomide, temozolomide, thiotepa, mitomycin C, AZQ, adozelesin, Cisplatin, Carboplatin, Ormaplatin, Oxaliplatin, C1-973, DWA 2114R, JM216, JM335, Bis(platinum), tomudex, azacitidine, cytarabine, gemcitabine, 6-Mercaptopurine, 6-Thioguanine, Hypoxanthine, teniposide 9-amino camptothecin, Topotecan, CPT-11, Doxorubicin, Daunomycin, Epirubicin, darubicin, mitoxantrone, losoxantrone, Dactinomycin (Actinomycin D), amsacrine, pyrazoloacridine, all-trans retinol, 14-hydroxy-retro-retinol, all-trans retinoic acid, N-(4-Hydroxyphenyl) retinamide, 13-cis retinoic acid, 3-Methyl TTNEB, 9-cis retinoic acid, fludarabine (2-F-ara-AMP), 2-chlorodeoxyadenosine (2-Cda), 20-pi-1,25 dihydroxyvitamin D3,5-ethynyluracil, abiraterone, aclarubicin, acylfulvene, adecypenol, adozelesin, aldesleukin, ALL-TK antagonists, altretamine, ambamustine, amidox, amifostine, aminolevulinic acid, amrubicin, amsacrine, anagrelide, anastrozole, andrographolide, angiogenesis inhibitors, antagonist D, antagonist G, antarelix, anti-dorsalizing morphogenetic protein-1, antiandrogen, prostatic carcinoma, antiestrogen, antineoplaston, antisense oligonucleotides, aphidicolin glycinate, apoptosis gene modulators, apoptosis regulators, apurinic acid, ara-CDP-DL-PTBA, argininedeaminase, asulacrine, atamestane, atrimustine, axinastatin 1, axinastatin 2, axinastatin 3, azasetron, azatoxin, azatyrosine, baccatin III derivatives, balanol, batimastat, BCR/ABL antagonists, benzochlorins, benzoylstaurosporine, beta lactam derivatives, beta-alethine, betaclamycin B, betulinic acid, bFGF inhibitor, bicalutamide, bisantrene, bisaziridinylspermine, bisnafide, bistratene A, bizelesin, breflate, bleomycin A2, bleomycin B2, bropirimine, budotitane, buthionine sulfoximine, calcipotriol, calphostin C, camptothecin derivatives (e.g., 10-hydroxy-camptothecin), canarypox IL-2, capecitabine, carboxamide-amino-triazole, carboxyamidotriazole, CaRest M3, CARN 700, cartilage derived inhibitor, carzelesin, casein kinase inhibitors (ICOS), castanospermine, cecropin B, cetrorelix, chlorins, chloroquinoxaline sulfonamide, cicaprost, cis-porphyrin, cladribine, clomifene analogues, clotrimazole, collismycin A, collismycin B, combretastatin A4, combretastatin analogue, conagenin, crambescidin 816, crisnatol, cryptophycin 8, cryptophycin A derivatives, curacin A, cyclopentanthraquinones, cycloplatam, cypemycin, cytarabine ocfosfate, cytolytic factor, cytostatin, dacliximab, decitabine, dehydrodidemnin B, 2′ deoxycoformycin (DCF), deslorelin, dexifosfamide, dexrazoxane, dexverapamil, diaziquone, didemnin B, didox, diethylnorspermine, dihydro-5-azacytidine, 9-dihydrotaxol, dioxamycin, diphenyl spiromustine, discodermolide, docosanol, dolasetron, doxifluridine, droloxifene, dronabinol, duocarmycin SA, ebselen, ecomustine, edelfosine, edrecolomab, eflornithine, elemene, emitefur, epirubicin, epothilones (A, R═H, B, R=Me), epithilones, epristeride, estramustine analogue, estrogen agonists, estrogen antagonists, etanidazole, etoposide, etoposide 4′-phosphate (etopofos), exemestane, fadrozole, fazarabine, fenretinide, filgrastim, finasteride, flavopiridol, flezelastine, fluasterone, fludarabine, fluorodaunorunicin hydrochloride, forfenimex, formestane, fostriecin, fotemustine, gadolinium texaphyrin, gallium nitrate, galocitabine, ganirelix, gelatinase inhibitors, gemcitabine, glutathione inhibitors, hepsulfam, heregulin, hexamethylene bisacetamide, homoharringtonine (HHT), hypericin, ibandronic acid, idarubicin, idoxifene, idramantone, ilmofosine, ilomastat, imidazoacridones, imiquimod, immunostimulant peptides, insulin-like growth factor-1 receptor inhibitor, interferon agonists, interferons, interleukins, iobenguane, iododoxorubicin, 4-ipomeanol, irinotecan, iroplact, irsogladine, isobengazole, isohomohalicondrin B, itasetron, jasplakinolide, kahalalide F, lamellarin-N triacetate, lanreotide, leinamycin, lenograstim, lentinan sulfate, leptolstatin, letrozole, leukemia inhibiting factor, leukocyte alpha interferon, leuprolide, estrogen, and progesterone combinations, leuprorelin, levamisole, liarozole, linear polyamine analogue, lipophilic disaccharide peptide, lipophilic platinum compounds, lissoclinamide 7, lobaplatin, lombricine, lometrexol, lonidamine, losoxantrone, lovastatin, loxoribine, lurtotecan, lutetium texaphyrin, lysofylline, lytic peptides, maytansine, mannostatin A, marimastat, masoprocol, maspin, matrilysin inhibitors, matrix metalloproteinase inhibitors, menogaril, merbarone, meterelin, methioninase, metoclopramide, MIF inhibitor, ifepristone, miltefosine, mirimostim, mismatched double stranded RNA, mithracin, mitoguazone, mitolactol, mitomycin analogues, mitonafide, mitotoxin fibroblast growth factor-saporin, mitoxantrone, mofarotene, molgramostim, monoclonal antibody, human chorionic gonadotrophin, monophosphoryl lipid A and myobacterium cell wall skeleton combinations, mopidamol, multiple drug resistance gene inhibitor, multiple tumor suppressor 1-based therapy, mustard anticancer agent, mycaperoxide B, mycobacterial cell wall extract, myriaporone, N-acetyldinaline, N-substituted benzamides, nafarelin, nagrestip, naloxone and pentazocine combinations, napavin, naphterpin, nartograstim, nedaplatin, nemorubicin, neridronic acid, neutral endopeptidase, nilutamide, nisamycin, nitric oxide modulators, nitroxide antioxidant, nitrullyn, 06-benzylguanine, octreotide, okicenone, oligonucleotides, onapristone, ondansetron, ondansetron, oracin, oral cytokine inducer, ormaplatin, osaterone, oxaliplatin, oxaunomycin, paclitaxel analogues, paclitaxel derivatives, palauamine, palmitoylrhizoxin, pamidronic acid, panaxytriol, panomifene, parabactin, pazelliptine, pegaspargase, peldesine, pentosan polysulfate sodium, pentostatin, pentrozole, perflubron, perfosfamide, perillyl alcohol, phenazinomycin, phenylacetate, phosphatase inhibitors, picibanil, pilocarpine hydrochloride, pirarubicin, piritrexim, placetin A, placetin B, plasminogen activator inhibitor, platinum complex, platinum compounds, platinum-triamine complex, podophyllotoxin, porfimer sodium, porfiromycin, propyl bis-acridone, prostaglandin J2, proteasome inhibitors, protein A-based immune modulator, protein kinase C inhibitor, protein kinase C inhibitors, microalgal, protein tyrosine phosphatase inhibitors, purine nucleoside phosphorylase inhibitors, purpurins, pyrazoloacridine, pyridoxylated hemoglobin polyoxyethylene conjugate, raf antagonists, raltitrexed, ramosetron, ras farnesyl protein transferase inhibitors, ras inhibitors, ras-GAP inhibitor, retelliptine demethylated, rhenium Re 186 etidronate, rhizoxin, ribozymes, RII retinamide, rogletimide, rohitukine, romurtide, roquinimex, rubiginone B 1, ruboxyl, safingol, saintopin, SarCNU, sarcophytol A, sargramostim, Sdi 1 mimetics, semustine, senescence derived inhibitor 1, sense oligonucleotides, signal transduction inhibitors, signal transduction modulators, single chain antigen binding protein, sizofuran, sobuzoxane, sodium borocaptate, sodium phenylacetate, solverol, somatomedin binding protein, sonermin, sparfosic acid, spicamycin D, spiromustine, splenopentin, spongistatin 1, squalamine, stem cell inhibitor, stem-cell division inhibitors, stipiamide, stromelysin inhibitors, sulfinosine, superactive vasoactive intestinal peptide antagonist, suradista, suramin, swainsonine, synthetic glycosaminoglycans, tallimustine, tamoxifen methiodide, tauromustine, tazarotene, tecogalan sodium, tegafur, tellurapyrylium, telomerase inhibitors, temoporfin, temozolomide, teniposide, tetrachlorodecaoxide, tetrazomine, thaliblastine, thalidomide, thiocoraline, thrombopoietin, thrombopoietin mimetic, thymalfasin, thymopoietin receptor agonist, thymotrinan, thyroid stimulating hormone, tin ethyl etiopurpurin, tirapazamine, titanocene dichloride, topotecan, topsentin, toremifene, totipotent stem cell factor, translation inhibitors, tretinoin, triacetyluridine, triciribine, trimetrexate, triptorelin, tropisetron, turosteride, tyrosine kinase inhibitors, tyrphostins, UBC inhibitors, ubenimex, urogenital sinus-derived growth inhibitory factor, urokinase receptor antagonists, vapreotide, variolin B, vector system, erythrocyte gene therapy, velaresol, veramine, verdins, verteporfin, vinorelbine, vinxaltine, vitaxin, vorozole, zanoterone, zeniplatin, zilascorb, or zinostatin stimalamer. In another embodiment of all aspects of the invention, a second treatment is utilized to determine gene expression in a sample from the patient.
In another embodiment of all aspects of the invention, the gene is selected from the group consisting of ABL1, ACTB, ACTN1, ACTN4, ACTR2, ADA, ADAM9, ADAMTS1, ADD1, ADORA2A, AF1Q, AIF1, AKAP1, AKAP13, AKR1B1, AKR1C1, AKT1, ALDH2, ALDH3A1, ALDOC, ALG5, ALMS1, ALOX15B, AMIGO2, AMPD2, AMPD3, ANAPC5, ANP32A, ANP32B, ANPEP, ANXA1, ANXA2, AP1G2, APOBEC3B, APRT, ARHE, ARHGAP15, ARHGAP25, ARHGDIB, ARHGEF6, ARL7, ASAH1, ASPH, ATF3, ATIC, ATOX1, ATP1B3, ATP2A2, ATP2A3, ATP5D, ATP5G2, ATP6V1B2, B2M, BASP1, BAX, BC008967, BCAT1, BCHE, BCL11B, BDNF, BHLHB2, BIN2, BLM, BLMH, BLVRA, BMI1, BNIP3, BRDT, BRRN1, BTN3A2, BTN3A3, Cllorf2, C14orf139, C15orf25, C18orf10, C1orf24, C1orf29, C1orf38, C1QR1, C22orf18, C5orf13, C6orf32, CACNA1G, CACNB3, CALD1, CALM1, CALML4, CALU, CAP350, CAPG, CAPN2, CAPN3, CASP2, CASP6, CASP7, CAST, CBFB, CBLB, CBR1, CBX3, CCL2, CCL21, CCNA2, CCNB1IP1, CCND3, CCR7, CCR9, CCT5, CD151, CD1A, CD1B, CD1C, CD1D, CD1E, CD2, CD28, CD37, CD3D, CD3E, CD3G, CD3Z, CD44, CD47, CD53, CD59, CD6, CD63, CD81, CD8A, CD8B1, CD99, CDC10, CDCl4B, CDH11, CDH2, CDKL5, CDKN2A, CDW52, CECR1, CENPB, CENTB1, CENTG2, CEP1, CG018, CHRNA3, CHS1, CIAPIN1, CKAP4, CKIP-1, CNN3, CNP, COL1A1, COL4A1, COL4A2, COL5A2, COL6A1, COL6A2, COPA, COPEB, CORO1A, CORO1C, COX7B, CPSF1, CRABP1, CREB3L1, CRIP2, CRK, CRY1, CSDA, CSPG2, CSRP1, CST3, CTBP1, CTGF, CTNNA1, CTSB, CTSC, CTSD, CTSL, CUGBP2, CUTC, CXCL1, CXCR4, CXorf9, CYFIP2, CYLD, CYR61, DATF1, DAZAP1, DBN1, DBT, DCTN1, DDOST, DDX18, DDX5, DGKA, DIAPH1, DIPA, DKCl, DKFZP434J154, DKFZP564C186, DKFZP564G2022, DKFZp564J157, DKFZP564K0822, DNAJC10, DNAPTP6, DOCK10, DOCK2, DPAGT1, DPEP2, DPYSL3, DSIPI, DUSP1, DUSP3, DXS9879E, DYRK2, E2F4, ECE1, ECM1, EEF1A1, EEF1B2, EEF1G, EFNB2, EHD2, EIF2S2, EIF3S2, EIF4B, EIF4G3, EIF5A, ELA2B, ELK3, EMP3, ENO2, EPAS1, EPB41L4B, ERCC2, ERG, ERP70, EVER1, EVI2A, EVL, EXT1, EZH2, F2R, FABP5, FAD104, FAM46A, FARSLA, FAT, FAU, FBL, FCGR2A, FCGR2C, FER1L3, FGFR1, FHL1, FHOD1, FKBP1A, FKBP9, FLII, FLJ10350, FLJ10539, FLJ10774, FLJ12270, FLJ13373, FLJ20859, FLJ21159, FLJ22457, FLJ35036, FLJ46603, FLNC, FLOT1, FMNL1, FN1, FNBP1, FOLH1, FOXF2, FSCN1, FSTL1, FTH1, FTL, FYB, FYN, GOS2, G6PD, GALIG, GALNT6, GAPD, GAS7, GATA2, GATA3, GFPT1, GIMP5, GIT2, GJA1, GLRB, GLTSCR2, GLUL, GMDS, GMFG, GNA15, GNAI2, GNAQ, GNB2, GNB5, GOT2, GPNMB, GPR65, GPRASP1, GPSM3, GRP58, GSTM2, GTF3A, GTSE1, GYPC, GZMA, GZMB, H1F0, H1FX, H2AFX, H3F3A, HA-1, HCLS1, HEM1, HEXB, HIC, HIST1H4C, HK1, HLA-A, HLA-B, HLA-DRA, HMGA1, HMGB2, HMGN2, HMMR, HNRPA1, HNRPD, HNRPM, HOXA9, HPRT1, HRMT1L1, HSA9761, HSPA5, HSU79274, HTATSF1, HU6800, ICAM1, ICAM2, IER3, IFI16, IFI44, IFITM2, IFITM3, IFRG28, IGFBP2, IGFBP3, IGSF4, IL13RA2, IL21R, IL2RG, IL4R, IL6, IL6R, IL6ST, IL8, IMPDH2, INPP5D, INSIG1 IQGAP1, IQGAP2, IRS2, ITGA3, ITGA5, ITGB2, ITK, ITM2A, JAK1, JARID2, JUNB, K-ALPHA-1, KHDRBS1, KIAA0220, KIAA0355, KIAA0802, KIAA0877, KIAA0922, KIAA1078, KIAA1128, KIAA1393, KIFC1, KPNB1, LAIR1, LAMB1, LAMB3, LAMR1, LAPTM5, LAT, LBR, LCK, LCP1, LCP2, LDHB, LEF1, LEPRE1, LGALS1, LGALS9, LHFPL2, LMNB1, LNK, LOC54103, LOC55831, LOC81558, LOC94105, LONP, LOX, LOXL2, LPHN2, LPXN, LRMP, LRP12, LRRC5, LRRN3, LST1, LTB, LUM, LY9, LY96, M6PRBP1, MAD2L1BP, MAGEB2, MAL, MAN1A1, MAP1B, MAP1LC3B, MAP4K1, MAPK1, MAPRE1, MARCKS, MAZ, MCAM, MCL1, MCM5, MCMI, MDH2, MDK, MDN1, MEF2C, MFNG, MGC17330, MGC21654, MGC2744, MGC4083, MGC8721, MGC8902, MGLL, MIA, MICA, MLPH, MME, MMP2, MPHOSPH6, MPP1, MPZL1, MRP63, MRPL12, MRPS2, MSN, MT1E, MT1K, MUF1, MVP, MYB, MYC, MYL6, MYL9, MYO1B, NAP1L1, NAP1L2, NARF, NARS, NASP, NBL1, NCL, NCOR2, NDN, NDUFAB1, NDUFS6, NFIL3, NFKBIA, NID2, NIPA2, NK4, NME4, NME7, NNMT, NOL5A, NOL8, NOMO2, NOTCH1, NPC1, NQO1, NR1D2, NUCB2, NUDC, NUP210, NUP88, NVL, NXF1, OBFC1, OCRL, OGT, OK/SW-c1.56, OPTN, OXA1L, P2RX5, P4HA1, PACAP, PAF53, PAFAH1B3, PALM2-AKAP2, PAX6, PBEF1, PCBP2, PCCB, PEA15, PFDN5, PFN1, PFN2, PGAM1, PGK1, PHEMX, PHLDA1, PIM2, PITPNC1, PKM2, PLACE, PLAGL1, PLAU, PLAUR, PLCB1, PLEK2, PLEKHCl, PLOD2, PLSCR1, PNAS-4, PNMA2, POLR2F, PON2, PPAP2B, PPIA, PPIF, PPP1R11, PPP2CB, PRF1, PRG1, PRIM1, PRKCA, PRKCB1, PRKCH, PRKCQ, PRKD2, PRNP, PRP19, PRPF8, PRPS1, PRSS11, PRSS23, PSCDBP, PSMB9, PSMC3, PSMC5, PSME2, PTGER4, PTGES2, PTMA, PTOV1, PTP4A3, PTPN7, PTPNS1, PTPRC, PTPRCAP, PTRF, PTS, PURA, PWP1, PYGL, QKI, RAB31, RAB3GAP, RAB7, RAB7L1, RAB9P40, RAC2, RAFTLIN, RAG2, RALY, RAP1B, RASGRP2, RBMX, RBPMS, RCN1, REA, RFC3, RFC5, RGC32, RGS3, RHOC, RHOH, RIMS3, RIOK3, RIPK2, RIS1, RNASE6, RNF144, RNPS1, RPL10, RPL10A, RPL11, RPL12, RPL13, RPL13A, RPL17, RPL18, RPL18A, RPL24, RPL3, RPL32, RPL36A, RPL39, RPL7, RPL9, RPLP0, RPLP2, RPS10, RPS11, RPS15, RPS15A, RPS19, RPS2, RPS23, RPS24, RPS25, RPS27, RPS28, RPS4X, RPS4Y1, RPS6, RPS7, RPS9, RRAS, RRAS2, RRBP1, RRM2, RUNX1, RUNX3, S100A13, S100A4, SART3, SATB1, SCAP1, SCARB1, SCARB2, SCN3A, SCTR, SEC31L2, SEC61G, SELL, SELPLG, SEMA4G, SEPT6, SEPT10, SEPW1, SERPINA1, SERPINB1, SERPINB6, SFRS3, SFRS5, SFRS6, SFRS7, SH2D1A, SH3GL3, SH3TC1, SHD1, SHFM1, SHMT2, SIAT1, SKB1, SKP2, SLA, SLC1A4, SLC20A1, SLC25A15, SLC25A5, SLC39A14, SLC39A6, SLC43A3, SLC4A2, SLC7A11, SLC7A6, SMA3, SMAD3, SMARCD3, SMOX, SMS, SND1, SNRPA, SNRPB, SNRPB2, SNRPE, SNRPF, SOD2, SOX4, SP140, SPANXC, SPARC, SPI1, SRF, SRM, SRRM1, SSA2, SSBP2, SSRP1, SSSCA1, STAG3, STAT1, STAT4, STAT5A, STC1, STC2, STMN1, STOML2, SUI1, T3JAM, TACC1, TACC3, TAF5, TAGLN, TALE TAP1, TARP, TBCA, TCF12, TCF4, TCF7, TFDP2, TFPI, TFRC, TGFB1, TIMM17A, TIMP1, TJP1, TK2, TM4SF1, TM4SF2, TM4SF8, TM6SF1, TMEM2, TMEM22, TMSB10, TMSNB, TNFAIP3, TNFAIP8, TNFRSF10B, TNFRSF1A, TNFRSF7, TNIK, TNPO1, TOB1, TOMM20, TOP2A, TOX, TPK1, TPM2, TRA@, TRA1, TRAM2, TRB@, TRD@, TRIM, TRIM14, TRIM22, TRIM28, TRIP13, TRPV2, TUBA3, TUBGCP3, TUFM, TUSC3, TXN, TXNDC5, UBASH3A, UBB, UBC, UBE2A, UBE2L6, UBE2S, UCHL1, UCK2, UCP2, UFD1L, UGCG, UGDH, UGT2B17, ULK2, UMPS, UNG, UROD, USP34, USP4, USP7, VASP, VAV1, VIM, VLDLR, VWF, WARS, WASPIP, WBSCR20A, WBSCR20C, WHSC1, WNT5A, XPO1, ZAP128, ZAP70, ZFP36L1, ZNF32, ZNF335, ZNF593, ZNFN1A1, or ZYX.
The nucleic acid sequence of each listed genes is publicly available through the GenBank or RefSeq database. The gene sequences are also included as part of the HG-U133A GeneChip from Affymetrix, Inc.
“Resistant” or “resistance” as used herein means that a cell, a tumor, a patient (e.g., a human), or a living organism is able to withstand treatment, e.g., with a compound, such as a chemotherapeutic agent, or radiation treatment, in that the treatment inhibits the growth of a cell, e.g., a cancer cell, in vitro or in a tumor, patient, or living organism by less than 10%, 20%, 30%, 40%, 50%, 60%, or 70% relative to the growth of a similar cell not exposed to the treatment. Resistance to treatment can be determined by a cell-based assay that measures the growth of treated cells as a function of the cells' absorbance of an incident light beam as used to perform the NCI60 assays described herein. In this example, greater absorbance indicates greater cell growth, and thus, resistance to the treatment. A reduction in growth indicates more resistance to a treatment. By “chemoresistant” or “chemoresistance” is meant resistance to a compound.
“Sensitive” or “sensitivity” as used herein means that a cell, a tumor, a patient (e.g., a human), or a living organism is responsive to treatment, e.g., with a compound, such as a chemotherapeutic agent, or radiation treatment, in that the treatment inhibits the growth of a cell, e.g., a cancer cell, in vitro or in a tumor, patient, or living organism by 70%, 80%, 90%, 95%, 99%, or 100%. Sensitivity to treatment may be determined by a cell-based assay that measures the growth of treated cells as a function of the cells' absorbance of an incident light beam as used to perform the NCI60 assays described herein. In this example, lesser absorbance indicates reduced cell growth, and thus, sensitivity to the treatment. A greater reduction in growth indicates more sensitivity to the treatment. By “chemosensitive” or “chemosensitivity” is meant sensitivity to a compound.
“Complement” of a nucleic acid sequence or a “complementary” nucleic acid sequence as used herein refers to an oligonucleotide which is in “antiparallel association” when it is aligned with the nucleic acid sequence such that the 5′ end of one sequence is paired with the 3′ end of the other. Nucleotides and other bases can have complements and may be present in complementary nucleic acids. Bases not commonly found in natural nucleic acids that can be included in the nucleic acids of the present invention include, for example, inosine and 7-deazaguanine.
“Complementarity” may not be perfect; stable duplexes of complementary nucleic acids can contain mismatched base pairs or unmatched bases. Skilled artisans can determine duplex stability empirically considering a number of variables including, for example, the length of the oligonucleotide, percent concentration of cytosine and guanine bases in the oligonucleotide, ionic strength, and incidence of mismatched base pairs. Typically, complementarity is determined by comparing contiguous nucleic acid sequences.
When complementary nucleic acid sequences form a stable duplex, they are said to be “hybridized” or to “hybridize” to each other or it is said that “hybridization” has occurred. Nucleic acids are referred to as being “complementary” if they contain nucleotides or nucleotide homologues that can form hydrogen bonds according to Watson-Crick base-pairing rules (e.g., G with C, A with T, or A with U) or other hydrogen bonding motifs such as, for example, diaminopurine with T, 5-methyl C with G, 2-thiothymidine with A, inosine with C, and pseudoisocytosine with G. Anti-sense RNA can be complementary to other oligonucleotides, e.g., mRNA.
“Biomarker” as used herein indicates a transcription product (e.g., RNA, such as an RNA primary transcript, mRNA, tRNA, rRNA, microRNA (miRNA), or complementary RNA or DNA (e.g., cDNA) strands thereof) or a translation product (e.g., a polypeptide or metabolite thereof) of a biomarker gene, as defined herein, whose level of expression indicates the sensitivity or resistance of a cell (e.g., a cancer cell), tissue, organism, or patient (e.g., a human) to a treatment (e.g., chemotherapy, radiation therapy, or surgery).
“Compound” as used herein means a chemical or biological substance, e.g., a drug, a protein, an antibody, or an oligonucleotide, which can be used to treat a disease or which has biological activity in vivo or in vitro. Compounds may or may not be approved by the U.S. Food and Drug Administration (FDA). Preferred compounds include, e.g., chemotherapy agents that can inhibit cancer growth. Preferred chemotherapy agents include, e.g., Vincristine, Cisplatin, Azaguanine, Etoposide, Adriamycin, Aclarubicin, Mitoxantrone, Mitomycin, Paclitaxel, Gemcitabine, Taxotere, Dexamethasone, Ara-C, Methylprednisolone, Methotrexate, Bleomycin, Methyl-GAG, Carboplatin, 5-FU (5-Fluorouracil), Rituximab (e.g., MABTHERA™), histone deacetylase (HDAC) inhibitors, and 5-Aza-2′-deoxycytidine (Decitabine). Exemplary radioactive chemotherapeutic agents include compounds containing alpha emitters such as astatine-211, bismuth-212, bismuth-213, lead-212, radium-223, actinium-225, and thorium-227, beta emitters such as tritium, strontium-90, cesium-137, carbon-11, nitrogen-13, oxygen-15, fluorine-18, iron-52, cobalt-55, cobalt-60, copper-61, copper-62, copper-64, zinc-62, zinc-63, arsenic-70, arsenic-71, arsenic-74, bromine-76, bromine-79, rubidium-82, yttrium-86, zirconium-89, indium-110, iodine-120, iodine-124, iodine-129, iodine-131, iodine-125, xenon-122, technetium-94m, technetium-94, technetium-99m, and technetium-99, and gamma emitters such as cobalt-60, cesium-137, and technetium-99m. Exemplary chemotherapeutic agents also include antibodies such as Alemtuzumab, Daclizumab, Rituximab (e.g., MABTHERA™), Trastuzumab (e.g., HERCEPTIN™), Gemtuzumab, Ibritumomab, Edrecolomab, Tositumomab, CeaVac, Epratuzumab, Mitumomab, Bevacizumab, Cetuximab, Edrecolomab, Lintuzumab, MDX-210, IGN-101, MDX-010, MAb, AME, ABX-EGF, EMD 72 000, Apolizumab, Labetuzumab, ior-t1, MDX-220, MRA, H-11 scFv, Oregovomab, huJ591 MAb, BZL, Visilizumab, TriGem, TriAb, R3, MT-201, G-250, ACA-125, Onyvax-105, CDP-860, BrevaRex MAb, AR54, IMC-1C11, GlioMAb-H, ING-1, Anti-LCG MAbs, MT-103, KSB-303, Therex, KW-2871, Anti-HMI.24, Anti-PTHrP, 2C4 antibody, SGN-30, TRAIL-RI MAb, CAT, Prostate cancer antibody, H22xKi-4, ABX-MA1, Imuteran, and Monopharm-C. Exemplary chemotherapeutic agents also include Acivicin; Aclarubicin; Acodazole Hydrochloride; Acronine; Adozelesin; Adriamycin; Aldesleukin; Altretamine; Ambomycin; A. metantrone Acetate; Aminoglutethimide; Amsacrine; Anastrozole; Anthramycin; Asparaginase; Asperlin; Azacitidine; Azetepa; Azotomycin; Batimastat; Benzodepa; Bicalutamide; Bisantrene Hydrochloride; Bisnafide Dimesylate; Bizelesin; Bleomycin Sulfate; Brequinar Sodium; Bropirimine; Busulfan; Cactinomycin; Calusterone; Camptothecin; Caracemide; Carbetimer; Carboplatin; Carmustine; Carubicin Hydrochloride; Carzelesin; Cedefingol; Chlorambucil; Cirolemycin; Cisplatin; Cladribine; Combretestatin A-4; Crisnatol Mesylate; Cyclophosphamide; Cytarabine; Dacarbazine; DACA (N-[2-(Dimethyl-amino) ethyl]acridine-4-carboxamide); Dactinomycin; Daunorubicin Hydrochloride; Daunomycin; Decitabine; Dexormaplatin; Dezaguanine; Dezaguanine Mesylate; Diaziquone; Docetaxel; Dolasatins; Doxorubicin; Doxorubicin Hydrochloride; Droloxifene; Droloxifene Citrate; Dromostanolone Propionate; Duazomycin; Edatrexate; Eflornithine Hydrochloride; Ellipticine; Elsamitrucin; Enloplatin; Enpromate; Epipropidine; Epirubicin Hydrochloride; Erbulozole; Esorubicin Hydrochloride; Estramustine; Estramustine Phosphate Sodium; Etanidazole; Ethiodized Oil I 131; Etoposide; Etoposide Phosphate; Etoprine; Fadrozole Hydrochloride; Fazarabine; Fenretinide; Floxuridine; Fludarabine Phosphate; Fluorouracil; 5-FdUMP; Fluorocitabine; Fosquidone; Fostriecin Sodium; Gemcitabine; Gemcitabine Hydrochloride; Gold Au 198; Homocamptothecin; Hydroxyurea; Idarubicin Hydrochloride; Ifosfamide; Ilmofosine; Interferon Alfa-2a; Interferon Alfa-2b; Interferon Alfa-n1; Interferon Alfa-n3; Interferon Beta-I a; Interferon Gamma-I b; Iproplatin; Irinotecan Hydrochloride; Lanreotide Acetate; Letrozole; Leuprolide Acetate; Liarozole Hydrochloride; Lometrexol Sodium; Lomustine; Losoxantrone Hydrochloride; Masoprocol; Maytansine; Mechlorethamine Hydrochloride; Megestrol Acetate; Melengestrol Acetate; Melphalan; Menogaril; Mercaptopurine; Methotrexate; Methotrexate Sodium; Metoprine; Meturedepa; Mitindomide; Mitocarcin; Mitocromin; Mitogillin; Mitomalcin; Mitomycin; Mitosper; Mitotane; Mitoxantrone Hydrochloride; Mycophenolic Acid; Nocodazole; Nogalamycin; Ormaplatin; Oxisuran; Paclitaxel; Pegaspargase; Peliomycin; Pentamustine; PeploycinSulfate; Perfosfamide; Pipobroman; Piposulfan; Piroxantrone Hydrochloride; Plicamycin; Plomestane; Porfimer Sodium; Porfiromycin; Prednimustine; Procarbazine Hydrochloride; Puromycin; Puromycin Hydrochloride; Pyrazofurin; Rhizoxin; Rhizoxin D; Riboprine; Rogletimide; Safingol; Safingol Hydrochloride; Semustine; Simtrazene; Sparfosate Sodium; Sparsomycin; Spirogermanium Hydrochloride; Spiromustine; Spiroplatin; Streptonigrin; Streptozocin; Strontium Chloride Sr 89; Sulofenur; Talisomycin; Taxane; Taxoid; Tecogalan Sodium; Tegafur; Teloxantrone Hydrochloride; Temoporfin; Teniposide; Teroxirone; Testolactone; Thiamiprine; Thioguanine; Thiotepa; Thymitaq; Tiazofurin; Tirapazamine; Tomudex; TOP53; Topotecan Hydrochloride; Toremifene Citrate; Trestolone Acetate; Triciribine Phosphate; Trimetrexate; Trimetrexate Glucuronate; Triptorelin; Tubulozole Hydrochloride; Uracil Mustard; Uredepa; Vapreotide; Verteporfin; Vinblastine; Vinblastine Sulfate; Vincristine; Vincristine Sulfate; Vindesine; Vindesine Sulfate; Vinepidine Sulfate; Vinglycinate Sulfate; Vinleurosine Sulfate; Vinorelbine Tartrate; Vinrosidine Sulfate; Vinzolidine Sulfate; Vorozole; Zeniplatin; Zinostatin; Zorubicin Hydrochloride; 2-Chlorodeoxyadenosine; 2′ Deoxyformycin; 9-aminocamptothecin; raltitrexed; N-propargyl-5,8-dideazafolic acid; 2-chloro-2′-arabino-fluoro-2′-deoxyadenosine; 2-chloro-2′-deoxyadenosine; anisomycin; trichostatin A; hPRL-G129R; CEP-751; linomide; sulfur mustard; nitrogen mustard (mechlor ethamine); cyclophosphamide; melphalan; chlorambucil; ifosfamide; busulfan; N-methyl-Nnitrosourea (MNU); N,N′-Bis(2-chloroethyl)-N-nitrosourea (BCNU); N-(2-chloroethyl)-N′ cyclohexyl-N-nitrosourea (CCNU); N-(2-chloroethyl)-N′-(trans-4-methylcyclohexyl-N-nitrosourea (MeCCNU); N-(2-chloroethyl)-N′-(diethyl)ethylphosphonate-N-nitrosourea (fotemustine); streptozotocin; diacarbazine (DTIC); mitozolomide; temozolomide; thiotepa; mitomycin C; AZQ; adozelesin; Cisplatin; Carboplatin; Ormaplatin; Oxaliplatin; C1-973; DWA 2114R; JM216; JM335; Bis(platinum); tomudex; azacitidine; cytarabine; gemcitabine; 6-Mercaptopurine; 6-Thioguanine; Hypoxanthine; teniposide 9-amino camptothecin; Topotecan; CPT-11; Doxorubicin; Daunomycin; Epirubicin; darubicin; mitoxantrone; losoxantrone; Dactinomycin (Actinomycin D); amsacrine; pyrazoloacridine; all-trans retinol; 14-hydroxy-retro-retinol; all-trans retinoic acid; N-(4-Hydroxyphenyl) retinamide; 13-cis retinoic acid; 3-Methyl TTNEB; 9-cis retinoic acid; fludarabine (2-F-ara-AMP); and 2-chlorodeoxyadenosine (2-Cda).
Other chemotherapeutic agents include, but are not limited to, 20-pi-1,25 dihydroxyvitamin D3; 5-ethynyluracil; abiraterone; aclarubicin; acylfulvene; adecypenol; adozelesin; aldesleukin; ALL-TK antagonists; altretamine; ambamustine; amidox; amifostine; aminolevulinic acid; amrubicin; amsacrine; anagrelide; anastrozole; andrographolide; angiogenesis inhibitors; antagonist D; antagonist G; antarelix; anti-dorsalizing morphogenetic protein-1; antiandrogen; antiestrogen; antineoplaston; antisense oligonucleotides; aphidicolin glycinate; apoptosis gene modulators; apoptosis regulators; apurinic acid; ara-CDP-DL-PTBA; argininedeaminase; asulacrine; atamestane; atrimustine; axinastatin 1; axinastatin 2; axinastatin 3; azasetron; azatoxin; azatyrosine; baccatin III derivatives; balanol; batimastat; BCR/ABL antagonists; benzochlorins; benzoylstaurosporine; beta lactam derivatives; beta-alethine; betaclamycin B; betulinic acid; bFGF inhibitor; bicalutamide; bisantrene; bisaziridinylspermine; bisnafide; bistratene A; bizelesin; breflate; bleomycin A2; bleomycin B2; bropirimine; budotitane; buthionine sulfoximine; calcipotriol; calphostin C; camptothecin derivatives (e.g., 10-hydroxy-camptothecin); canarypox IL-2; capecitabine; carboxamide-amino-triazole; carboxyamidotriazole; CaRest M3; CARN 700; cartilage derived inhibitor; carzelesin; casein kinase inhibitors (ICOS); castanospermine; cecropin B; cetrorelix; chlorins; chloroquinoxaline sulfonamide; cicaprost; cis-porphyrin; cladribine; clomifene analogues; clotrimazole; collismycin A; collismycin B; combretastatin A4; combretastatin analogue; conagenin; crambescidin 816; crisnatol; cryptophycin 8; cryptophycin A derivatives; curacin A; cyclopentanthraquinones; cycloplatam; cypemycin; cytarabine ocfosfate; cytolytic factor; cytostatin; dacliximab; decitabine; dehydrodidemnin B; 2′ deoxycoformycin (DCF); deslorelin; dexifosfamide; dexrazoxane; dexverapamil; diaziquone; didemnin B; didox; diethylnorspermine; dihydro-5-azacytidine; 9-dihydrotaxol; dioxamycin; diphenyl spiromustine; discodermolide; docosanol; dolasetron; doxifluridine; droloxifene; dronabinol; duocarmycin SA; ebselen; ecomustine; edelfosine; edrecolomab; eflornithine; elemene; emitefur; epirubicin; epothilones (A, R═H; B, R=Me); epithilones; epristeride; estramustine analogue; estrogen agonists; estrogen antagonists; etanidazole; etoposide; etoposide 4′-phosphate (etopofos); exemestane; fadrozole; fazarabine; fenretinide; filgrastim; finasteride; flavopiridol; flezelastine; fluasterone; fludarabine; fluorodaunorunicin hydrochloride; forfenimex; formestane; fostriecin; fotemustine; gadolinium texaphyrin; gallium nitrate; galocitabine; ganirelix; gelatinase inhibitors; gemcitabine; glutathione inhibitors; hepsulfam; heregulin; hexamethylene bisacetamide; homoharringtonine (HHT); hypericin; ibandronic acid; idarubicin; idoxifene; idramantone; ilmofosine; ilomastat; imidazoacridones; imiquimod; immunostimulant peptides; insulin-like growth factor-1 receptor inhibitor; interferon agonists; interferons; interleukins; iobenguane; iododoxorubicin; 4-ipomeanol; irinotecan; iroplact; irsogladine; isobengazole; isohomohalicondrin B; itasetron; jasplakinolide; kahalalide F; lamellarin-N triacetate; lanreotide; leinamycin; lenograstim; lentinan sulfate; leptolstatin; letrozole; leukemia inhibiting factor; leukocyte alpha interferon; leuprolide, estrogen, and progesterone combinations; leuprorelin; levamisole; liarozole; linear polyamine analogue; lipophilic disaccharide peptide; lipophilic platinum compounds; lissoclinamide 7; lobaplatin; lombricine; lometrexol; lonidamine; losoxantrone; lovastatin; loxoribine; lurtotecan; lutetium texaphyrin; lysofylline; lytic peptides; maytansine; mannostatin A; marimastat; masoprocol; maspin; matrilysin inhibitors; matrix metalloproteinase inhibitors; menogaril; merbarone; meterelin; methioninase; metoclopramide; MIF inhibitor; ifepristone; miltefosine; mirimostim; mismatched double stranded RNA; mithracin; mitoguazone; mitolactol; mitomycin analogues; mitonafide; mitotoxin fibroblast growth factor-saporin; mitoxantrone; mofarotene; molgramostim; monoclonal antibody, human chorionic gonadotrophin; monophosphoryl lipid A and myobacterium cell wall skeleton combinations; mopidamol; multiple drug resistance gene inhibitor; multiple tumor suppressor 1-based therapy; mustard anticancer agent; mycaperoxide B; mycobacterial cell wall extract; myriaporone; N-acetyldinaline; N-substituted benzamides; nafarelin; nagrestip; naloxone and pentazocine combinations; napavin; naphterpin; nartograstim; nedaplatin; nemorubicin; neridronic acid; neutral endopeptidase; nilutamide; nisamycin; nitric oxide modulators; nitroxide antioxidant; nitrullyn; 06-benzylguanine; octreotide; okicenone; oligonucleotides; onapristone; ondansetron; ondansetron; oracin; oral cytokine inducer; ormaplatin; osaterone; oxaliplatin; oxaunomycin; paclitaxel analogues; paclitaxel derivatives; palauamine; palmitoylrhizoxin; pamidronic acid; panaxytriol; panomifene; parabactin; pazelliptine; pegaspargase; peldesine; pentosan polysulfate sodium; pentostatin; pentrozole; perflubron; perfosfamide; perillyl alcohol; phenazinomycin; phenylacetate; phosphatase inhibitors; picibanil; pilocarpine hydrochloride; pirarubicin; piritrexim; placetin A; placetin B; plasminogen activator inhibitor; platinum complex; platinum compounds; platinum-triamine complex; podophyllotoxin; porfimer sodium; porfiromycin; propyl bis-acridone; prostaglandin J2; proteasome inhibitors; protein A-based immune modulator; protein kinase C inhibitor; protein kinase C inhibitors, microalgal; protein tyrosine phosphatase inhibitors; purine nucleoside phosphorylase inhibitors; purpurins; pyrazoloacridine; pyridoxylated hemoglobin polyoxyethylene conjugate; raf antagonists; raltitrexed; ramosetron; ras farnesyl protein transferase inhibitors; ras inhibitors; ras-GAP inhibitor; retelliptine demethylated; rhenium Re 186 etidronate; rhizoxin; ribozymes; RII retinamide; rogletimide; rohitukine; romurtide; roquinimex; rubiginone B 1; ruboxyl; safingol; saintopin; SarCNU; sarcophytol A; sargramostim; Sdi 1 mimetics; semustine; senescence derived inhibitor 1; sense oligonucleotides; signal transduction inhibitors; signal transduction modulators; single chain antigen binding protein; sizofuran; sobuzoxane; sodium borocaptate; sodium phenylacetate; solverol; somatomedin binding protein; sonermin; sparfosic acid; spicamycin D; spiromustine; splenopentin; spongistatin 1; squalamine; stem cell inhibitor; stem-cell division inhibitors; stipiamide; stromelysin inhibitors; sulfinosine; superactive vasoactive intestinal peptide antagonist; suradista; suramin; swainsonine; synthetic glycosaminoglycans; tallimustine; tamoxifen methiodide; tauromustine; tazarotene; tecogalan sodium; tegafur; tellurapyrylium; telomerase inhibitors; temoporfin; temozolomide; teniposide; tetrachlorodecaoxide; tetrazomine; thaliblastine; thalidomide; thiocoraline; thrombopoietin; thrombopoietin mimetic; thymalfasin; thymopoietin receptor agonist; thymotrinan; thyroid stimulating hormone; tin ethyl etiopurpurin; tirapazamine; titanocene dichloride; topotecan; topsentin; toremifene; totipotent stem cell factor; translation inhibitors; tretinoin; triacetyluridine; triciribine; trimetrexate; triptorelin; tropisetron; turosteride; tyrosine kinase inhibitors; tyrphostins; UBC inhibitors; ubenimex; urogenital sinus-derived growth inhibitory factor; urokinase receptor antagonists; vapreotide; variolin B; vector system, erythrocyte gene therapy; velaresol; veramine; verdins; verteporfin; vinorelbine; vinxaltine; vitaxin; vorozole; zanoterone; zeniplatin; zilascorb; and zinostatin stimalamer.
To “inhibit growth” as used herein means causing a reduction in cell growth in vivo or in vitro by, e.g., 10%, 20%, 30%, 40%, 50%, 60%, 70%, 80%, 90%, 95%, or 99% or more, as evident by a reduction in the size or number of cells exposed to a treatment (e.g., exposure to a compound), relative to the size or number of cells in the absence of the treatment. Growth inhibition can be the result of a treatment that induces apoptosis in a cell, induces necrosis in a cell, slows cell cycle progression, disrupts cellular metabolism, induces cell lysis, or induces some other mechanism that reduces the size or number of cells.
“Biomarker gene” as used herein means a gene in a cell (e.g., a cancer cell) the expression of which, as measured by, e.g., detecting the level of one or more biomarkers produced from the gene, correlates to sensitivity or resistance of the cell, tissue, organism, or patient (e.g., a human) to a treatment (e.g., chemotherapy, radiation therapy, or surgery).
“Microarray” as used herein means a device employed by any method that quantifies one or more subject oligonucleotides, e.g., DNA or RNA, or analogues thereof, at a time. One exemplary class of microarrays consists of DNA probes attached to a glass or quartz surface. Many microarrays, e.g., those made by Affymetrix, use several probes for determining the expression of a single gene. The DNA microarray can contain oligonucleotide probes that may be, e.g., full-length cDNAs complementary to an RNA or cDNA fragments that hybridize to part of an RNA. Exemplary RNAs include mRNA, miRNA, and miRNA precursors. Exemplary microarrays also include a “nucleic acid microarray” having a substrate-bound plurality of nucleic acids, hybridization to each of the plurality of bound nucleic acids being separately detectable. The substrate can be solid or porous, planar or non-planar, unitary or distributed. Exemplary nucleic acid microarrays include all of the devices so called in Schena (ed.), DNA Microarrays: A Practical Approach (Practical Approach Series), Oxford University Press (1999); Nature Genet. 21(1)(suppl.):1-60 (1999); and Schena (ed.), Microarray Biochip: Tools and Technology, Eaton Publishing Company/BioTechniques Books Division (2000). Additionally, exemplary nucleic acid microarrays can include a substrate-bound plurality of nucleic acids in which the plurality of nucleic acids is disposed on a plurality of beads, rather than on a unitary planar substrate, as is described, inter alia, in Brenner et al., Proc. Natl. Acad. Sci. USA 97(4):1665-1670 (2000). Examples of nucleic acid microarrays may be found in U.S. Pat. Nos. 6,391,623, 6,383,754, 6,383,749, 6,380,377, 6,379,897, 6,376,191, 6,372,431, 6,351,712 6,344,316, 6,316,193, 6,312,906, 6,309,828, 6,309,824, 6,306,643, 6,300,063, 6,287,850, 6,284,497, 6,284,465, 6,280,954, 6,262,216, 6,251,601, 6,245,518, 6,263,287, 6,251,601, 6,238,866, 6,228,575, 6,214,587, 6,203,989, 6,171,797, 6,103,474, 6,083,726, 6,054,274, 6,040,138, 6,083,726, 6,004,755, 6,001,309, 5,958,342, 5,952,180, 5,936,731, 5,843,655, 5,814,454, 5,837,196, 5,436,327, 5,412,087, and 5,405,783, herein incorporated by reference.
Exemplary microarrays can also include “peptide microarrays” or “protein microarrays” having a substrate-bound plurality of polypeptides, the binding of a oligonucleotide, a peptide, or a protein to the plurality of bound polypeptides being separately detectable. Alternatively, the peptide microarray, can have a plurality of binders, including, but not limited to, monoclonal antibodies, polyclonal antibodies, phage display binders, yeast 2 hybrid binders, aptamers, that can specifically detect the binding of specific oligonucleotides, peptides, or proteins. Examples of peptide arrays may be found in International Patent Publication Nos. WO 02/31463, WO 02/25288, WO 01/94946, WO 01/88162, WO 01/68671, WO 01/57259, WO 00/61806, WO 00/54046, WO 00/47774, WO 99/40434, WO 99/39210, and WO 97/42507, and in U.S. Pat. Nos. 6,268,210, 5,766,960, and 5,143,854, herein incorporated by reference.
“Gene expression” as used herein means the level of expression of a biomarker gene (e.g., the level of a transcription product, such as an mRNA, tRNA, or microRNA, or its complement (e.g., a cDNA complement of the transcription product), or a translation product, such as a polypeptide or metabolite thereof) in a cell, tissue, organism, or patient (e.g., a human). Gene expression can be measured by detecting the presence, quantity, or activity of a DNA, RNA, or polypeptide, or modifications thereof (e.g., splicing, phosphorylation, and acetylation) associated with a given gene.
“NCI60” as used herein means a panel of 60 cancer cell lines from lung, colon, breast, ovarian, leukemia, renal, melanoma, prostate, and brain cancers including the following cancer cell lines: NSCLC_NCIH23, NSCLC_NCIH522, NSCLC_A549ATCC, NSCLC_EKVX, NSCLC_NCIH226, NSCLC_NCIH332M, NSCLC_H460, NSCLC_HOP62, NSCLC_HOP92, COLON_HT29, COLON_HCC-2998, COLON_HCT116, COLON_SW620, COLON_COLO205, COLON_HCT15, COLON_KM12, BREAST_MCF7, BREAST_MCF7ADRr, BREAST_MDAMB231, BREAST_HS578T, BREAST_MDAMB435, BREAST_MDN, BREAST_BT549, BREAST_T47D, OVAR_OVCAR3, OVAR_OVCAR4, OVAR_OVCAR5, OVAR_OVCAR8, OVAR_IGROV1, OVAR_SKOV3, LEUK_CCRFCEM, LEUK_K562, LEUK_MOLT4, LEUK_HL60, LEUK_RPMI8266, LEUK_SR, RENAL_UO31, RENAL_SN12C, RENAL_A498, RENAL_CAKI1, RENAL_RXF393, RENAL7860, RENAL_ACHN, RENAL_TK10, MELAN_LOXIMVI, MELAN_MALME3M, MELAN_SKMEL2, MELAN_SKMEL5, MELAN_SKMEL28, MELAN_M14, MELAN_UACC62, MELAN_UACC257, PROSTATE_PC3, PROSTATE_DU145, CNS_SNB19, CNS_SNB75, CNS_U251, CNS_SF268, CNS_SF295, and CNS_SF539.
“Treatment” or “medical treatment” means administering to a patient (e.g., a human) or living organism or exposing to a cell or tumor a compound (e.g., a drug, a protein, an antibody, an oligonucleotide, a chemotherapeutic agent, and a radioactive agent) or some other form of medical intervention used to treat or prevent cancer or the symptoms of cancer (e.g., cryotherapy and radiation therapy). Radiation therapy includes the administration to a patient of radiation generated from sources such as particle accelerators and related medical devices that emit X-radiation, gamma radiation, or electron (Beta radiation) beams. A treatment may further include surgery, e.g., to remove a tumor from a patient or living organism.
Other features and advantages of the invention will be apparent from the following description, drawings, and claims.
BRIEF DESCRIPTION OF THE DRAWINGS
FIG. 1 depicts an illustration of the method of identifying biomarkers and predicting patient sensitivity to a medical treatment. The method has an in vitro component where the growth inhibition of a compound or medical treatment is measured on cell lines (6 of the 60 cell lines tested are shown). The gene expression is measured on the same cell lines without compound treatment. Those genes that have a correlation above a certain cutoff (e.g., a preffered cutoff of 0.3, in which a correlation coefficient equal to or greater than the cutoff of 0.3 is deemed statistcally significant by, e.g., cross-validation) to the growth inhibition are termed marker genes and the expression of those genes in vivo, e.g., may predict the sensitivity or resistance of a patient's cancer to a compound or other medical treatment. The in vivo component is applied to a patient to determine whether or not the treatment will be effective in treating disease in the patient. Here, the gene expression in cells of a sample of the suspected disease tissue (e.g., a tumor) in the patient is measured before or after treatment. The activity of the marker genes in the sample is compared to a reference population of patients known to be sensitive or resistant to the treatment. The expression of marker genes in the cells of the patient known to be expressed in the cells of reference patients sensitive to the treatment indicates that the patient to be treated is sensitive to the treatment and vice versa. Based on this comparison the patient is predicted to be sensitive or resistant to treatment with the compound.
FIG. 2 depicts the treatment sensitivity predictions for a 5-year-old American boy with a brain tumor. The subject had surgery to remove the tumor and, based on the analysis of gene expression in cells from a sample of the tumor, the subject was predicted to be chemosensitive to ten chemotherapy drugs. The subject received Vincristine and Cisplatin and survived.
FIG. 3 depicts the treatment sensitivity predictions for a 7-month-old American girl with a brain tumor. The subject had surgery to remove the tumor, and based on the analysis of gene expression in cells from a sample of the tumor, the subject was predicted to be chemoresistant to twelve chemotheraphydrugs. The subject received Vincristine and Cisplatin, but passed away 9 months later.
FIG. 4 depicts the survival rate of 60 brain cancer patients divided into a group predicted to be chemosensitive to Cisplatin and a group predicted to be chemoresistant to Cisplatin. All patients received Cisplatin after surgery.
FIG. 5 depicts the survival rate of 56 lymphoma patients divided into a group predicted to be chemosensitive to Vincristine and Adriamycin and a group predicted to be chemoresistant. All patients received Vincristine and Adriamycin.
FIG. 6 depicts the survial rate of 19 lung cancer patients divided into a group predicted to be chemosensitive to Cisplatin and a group predicted to be chemoresistant. All patients received Cisplatin.
FIG. 7 depicts the survival rate of 14 diffuse large-B-cell lymphoma (DLBCL) patients divided into a group predicted to be chemosensitive to the drug combination R-CHOP and a group predicted to be chemoresistant. All patients were treated with R-CHOP.
FIG. 8 depicts the predictions of sensitivity or resistance to treatment of a patient diagnosed with DLBCL. Various drug combinations and radiation therapy are considered. The drug combinations (indicated by abbreviations) are those commonly used to treat DLBCL.
FIG. 9 depicts the survival rate of 60 brain cancer patients divided into a group predicted to be sensitive to radiation treatment and a group predicted to be resistant. All patients were treated with radiation.
FIG. 10 depicts the survival rate of 60 brain cancer patients divided into a group predicted to be sensitive to radiation treatment and a group predicted to be resistant. All patients were treated with radiation. Gene biomarkers used in predicting radiation sensitivity or resistance were obtained using the correlation of the median gene expression measurement to cancer cell growth as opposed to the median of the correlations as employed in FIG. 9.
FIG. 11 depicts the predicted sensitivity of cancer patients to sunitinib. The cancer patients are grouped according to cancer type or origin and cancer types with predicted high sensitivity are labeled.
DETAILED DESCRIPTION
The invention features methods for identifying biomarkers of treatment sensitivity, e.g., chemosensitivity to compounds, or resistance, devices that include the biomarkers, kits that include the devices, and methods for predicting treatment efficacy in a patient (e.g., a human diagnosed with cancer). The kits of the invention include microarrays having oligonucleotide probes that are biomarkers of sensitivity or resistance to treatment (e.g., treatment with a chemotherapeutic agent) that hybridize to nucleic acids derived from or obtained from a subject and instructions for using the device to predict the sensitivity or resistance of the subject to the treatment. The invention also features methods of using the microarrays to determine whether a subject, e.g., a cancer patient, will be sensitive or resistant to treatment with, e.g., a chemotherapy agent. Also featured are methods of identifying biomarkers of sensitivity or resistance to a medical treatment based on the correlation of gene or microRNA expression to treatment efficacy, e.g., the growth inhibition of cancer cells. Gene or microRNA biomarkers that identify subjects as sensitive or resistant to a treatment can also be identified within patient populations already thought to be sensitive or resistant to that treatment. Thus, the methods, devices, and kits of the invention can be used to identify patient subpopulations that are responsive to a treatment thought to be ineffective for treating disease (e.g., cancer) in the general population. More generally, cancer patient sensitivity to a compound or other medical treatment can be predicted using biomarker expression regardless of prior knowledge about patient responsiveness to treatment. The method according to the present invention can be implemented using software that is run on an apparatus (e.g., a computer) for measuring biomarker expression in connection with a microarray. The microarray (e.g., a DNA microarray), included in a kit for processing a tumor sample from a patient, and the apparatus for reading the microarray and turning the result into a chemosensitivity profile for the patient may be used to implement the methods of the invention.
Microarrays Containing Oligonucleotide Probes
The microarrays of the invention include one or more oligonucleotide probes that have nucleotide sequences that are substantially identical to or substantially complementary to, e.g., at least 5, 8, 12, 20, 30, 40, 60, 80, 100, 150, or 200 consecutive nucleotides (or nucleotide analogues) of the biomarker genes or biomarker gene products (e.g., transcription or translation gene products, such as microRNAs) listed below. The oligonucleotide probes may be, e.g., 5-20, 25, 5-50, 50-100, or over 100 nucleotides long. The oligonucleotide probes may be deoxyribonucleic acids (DNA) or ribonucleic acids (RNA). Consecutive nucleotides within the oligonucleotide probes (e.g., 5-20, 25, 5-50, 50-100, or over 100 consecutive nucleotides), which are used as biomarkers of chemosensitivity, may also appear as consecutive nucleotides in one or more of the genes described herein beginning at or near, e.g., the first, tenth, twentieth, thirtieth, fortieth, fiftieth, sixtieth, seventieth, eightieth, ninetieth, hundredth, hundred-fiftieth, two-hundredth, five-hundredth, or one-thousandth nucleotide of the genes or microRNAs listed in Tables 1-136 below. Column List2006 of Tables 1-21 indicates the preferred biomarker genes for the compound lists. Column List_Preferred of Tables 1-21 indicates the most preferred biomarker genes. Column List2005 of Tables 1-21 indicates additional biomarkers employed in Examples 1-8. Column Correlation of Tables 1-21 indicates the correlation coefficient of the biomarker gene expression to cancer cell growth inhibition. Tables 80-136 indicate microRNA biomarkers that can be used to determine a patient's (e.g., a human's) sensitivity to a treatment. The following combinations of biomarkers have been used to detect a patient's sensitivity to the indicated treatment:
a) One or more of the gene sequences SFRS3, CCT5, RPL39, SLC25A5, UBE2S, EEF1A1, RPLP2, RPL24, RPS23, RPL39, RPL18, NCL, RPL9, RPL10A, RPS10, EIF3S2, SHFM1, RPS28, REA, RPL36A, GAPD, HNRPA1, RPS11, HNRPA1, LDHB, RPL3, RPL11, MRPL12, RPL18A, COX7B, and RPS7, preferably gene sequences UBB, RPS4X, S100A4, NDUFS6, B2M, C14orf139, MAN1A1, SLC25A5, RPL10, RPL12, EIF5A, RPL36A, SUI1, BLMH, CTBP1, TBCA, MDH2, and DXS9879E, and most preferably gene sequences RPS4X, S100A4, NDUFS6, C14orf139, SLC25A5, RPL10, RPL12, EIF5A, RPL36A, BLMH, CTBP1, TBCA, MDH2, and DXS9879E, whose expression indicates chemosensitivity to Vincristine.
b) One or more of the gene sequences B2M, ARHGDIB, FTL, NCL, MSN, SNRPF, XPO1, LDHB, SNRPF, GAPD, PTPN7, ARHGDIB, RPS27, IFI16, C5orf13, and HCLS1, preferably gene sequences C1QR1, HCLS1, CD53, SLA, PTPN7, PTPRCAP, ZNFN1A1, CENTB1, PTPRC, 1E116, ARHGEF6, SEC31L2, CD3Z, GZMB, CD3D, MAP4K1, GPR65, PRF1, ARHGAP15, TM6SF1, and TCF4, and most preferably gene sequences C1QR1, SLA, PTPN7, ZNFN1A1, CENTB1, 1E116, ARHGEF6, SEC31L2, CD3Z, GZMB, CD3D, MAP4K1, GPR65, PRF1, ARHGAP15, TM6SF1, and TCF4, whose expression indicates chemosensitivity to Cisplatin.
c) One or more of the gene sequences PRPS1, DDOST, B2M, SPARC, LGALS1, CBFB, SNRPB2, MCAM, MCAM, EIF2S2, HPRT1, SRM, FKBP1A, GYPC, UROD, MSN, HNRPA1, SND1, COPA, MAPRE1, EIF3S2, ATP1B3, EMP3, ECM1, ATOX1, NARS, PGK1, OK/SW-c1.56, FN1, EEF1A1, GNAI2, PRPS1, RPL7, PSMB9, GPNMB, PPP1R11, MIA, RAB7, VIM, and SMS, preferably gene sequences MSN, SPARC, VIM, SRM, SCARB1, SIAT1, CUGBP2, GAS7, ICAM1, WASPIP, ITM2A, PALM2-AKAP2, ANPEP, PTPNS1, MPP1, LNK, FCGR2A, EMP3, RUNX3, EVI2A, BTN3A3, LCP2, BCHE, LY96, LCP1, 1E116, MCAM, MEF2C, SLC1A4, BTN3A2, FYN, FN1, C1orf38, CHS1, CAPN3, FCGR2C, TNIK, AMPD2, SEPT6, RAFTLIN, SLC43A3, RAC2, LPXN, CKIP-1, FLJ10539, FLJ35036, DOCK10, TRPV2, IFRG28, LEF1, and ADAMTS1, and most preferably gene sequences SRM, SCARB1, SIAT1, CUGBP2, ICAM1, WASPIP, ITM2A, PALM2-AKAP2, PTPNS1, MPP1, LNK, FCGR2A, RUNX3, EVI2A, BTN3A3, LCP2, BCHE, LY96, LCP1, IFI16, MCAM, MEF2C, SLC1A4, FYN, C1orf38, CHS1, FCGR2C, TNIK, AMPD2, SEPT6, RAFTLIN, SLC43A3, RAC2, LPXN, CKIP-1, FLJ10539, FLJ35036, DOCK10, TRPV2, IFRG28, LEF1, and ADAMTS1, whose expression indicates chemosensitivity to Azaguanine.
d) One or more of the gene sequences B2M, MYC, CD99, RPS24, PPIF, PBEF1, and ANP32B, preferably gene sequences CD99, INSIG1, LAPTM5, PRG1, MUF1, HCLS1, CD53, SLA, SSBP2, GNB5, MFNG, GMFG, PSMB9, EVI2A, PTPN7, PTGER4, CXorf9, PTPRCAP, ZNFN1A1, CENTB1, PTPRC, NAP1L1, HLA-DRA, IFI16, CORO1A, ARHGEF6, PSCDBP, SELPLG, LAT, SEC31L2, CD3Z, SH2D1A, GZMB, SCN3A, ITK, RAFTLIN, DOCK2, CD3D, RAC2, ZAP70, GPR65, PRF1, ARHGAP15, NOTCH1, and UBASH3A, and most preferably gene sequences CD99, INSIGE PRG1, MUF1, SLA, SSBP2, GNB5, MFNG, PSMB9, EVI2A, PTPN7, PTGER4, CXorf9, ZNFN1A1, CENTB1, NAP1L1, HLA-DRA, IFI16, ARHGEF6, PSCDBP, SELPLG, LAT, SEC31L2, CD3Z, SH2D1A, GZMB, SCN3A, RAFTLIN, DOCK2, CD3D, RAC2, ZAP70, GPR65, PRF1, ARHGAP15, NOTCH1, and UBASH3A, whose expression indicates chemosensitivity to Etoposide.
e) One or more of the gene sequences KIAA0220, B2M, TOP2A, CD99, SNRPE, RPS27, HNRPA1, CBX3, ANP32B, HNRPA1, DDX5, PPIA, SNRPF, and USP7, preferably gene sequences CD99, LAPTM5, ALDOC, HCLS1, CD53, SLA, SSBP2, IL2RG, GMFG, CXorf9, RHOH, PTPRCAP, ZNFN1A1, CENTB1, TCF7, CD1C, MAP4K1, CD1B, CD3G, PTPRC, CCR9, CORO1A, CXCR4, ARHGEF6, HEM1, SELPLG, LAT, SEC31L2, CD3Z, SH2D1A, CD1A, LAIR1, ITK, TRB@, CD3D, WBSCR20C, ZAP70, IFI44, GPR65, AIF1, ARHGAP15, NARF, and PACAP, and most preferably gene sequences CD99, ALDOC, SLA, SSBP2, IL2RG, CXorf9, RHOH, ZNFN1A1, CENTB1, CD1C, MAP4K1, CD3G, CCR9, CXCR4, ARHGEF6, SELPLG, LAT, SEC31L2, CD3Z, SH2D1A, CD1A, LAIR1, TRB@, CD3D, WBSCR20C, ZAP70, IFI44, GPR65, AIF1, ARHGAP15, NARF, and PACAP, whose expression indicates chemosensitivity to Adriamycin.
f) One or more of the gene sequences RPLP2, LAMR1, RPS25, EIF5A, TUFM, HNRPA1, RPS9, MYB, LAMR1, ANP32B, HNRPA1, HNRPA1, EIF4B, HMGB2, RPS15A, and RPS7, preferably gene sequences RPL12, RPL32, RPLP2, MYB, ZNFN1A1, SCAP1, STAT4, SP140, AMPD3, TNFAIP8, DDX18, TAF5, FBL, RPS2, PTPRC, DOCK2, GPR65, HOXA9, FLJ12270, and HNRPD, and most preferably gene sequences RPL12, RPLP2, MYB, ZNFN1A1, SCAP1, STAT4, SP140, AMPD3, TNFAIP8, DDX18, TAF5, RPS2, DOCK2, GPR65, HOXA9, FLJ12270, and HNRPD, whose expression indicates chemosensitivity to Aclarubicin.
g) One or more of the gene sequences ARHGEF6, B2M, TOP2A, TOP2A, ELA2B, PTMA, LMNB1, TNFRSF1A, NAP1L1, B2M, HNRPA1, RPL9, C5orf13, NCOR2, ANP32B, OK/SW-c1.56, TUBA3, HMGN2, PRPS1, DDX5, PRG1, PPIA, G6PD, PSMB9, SNRPF, and MAP1B, preferably gene sequences PGAM1, DPYSL3, INSIG1, GJA1, BNIP3, PRG1, G6PD, BASP1, PLOD2, LOXL2, SSBP2, C1orf29, TOX, STC1, TNFRSF1A, NCOR2, NAP1L1, LOC94105, COL6A2, ARHGEF6, GATA3, TFPI, LAT, CD3Z, AF1Q, MAP1B, PTPRC, PRKCA, TRIM22, CD3D, BCAT1, IFI44, CCL2, RAB31, CUTC, NAP1L2, NME7, FLJ21159, and COL5A2, and most preferably gene sequences PGAM1, DPYSL3, INSIG1, GJA1, BNIP3, PRG1, G6PD, PLOD2, LOXL2, SSBP2, C1orf29, TOX, STC1, TNFRSF1A, NCOR2, NAP1L1, LOC94105, ARHGEF6, GATA3, TFPI, LAT, CD3Z, AF1Q, MAP1B, TRIM22, CD3D, BCAT1, IFI44, CUTC, NAP1L2, NME7, FLJ21159, and COL5A2, whose expression indicates chemosensitivity to Mitoxantrone.
h) One or more of the gene sequences GAPD, GAPD, GAPD, TOP2A, SUI1, TOP2A, FTL, HNRPC, TNFRSF1A, SHCl, CCT7, P4HB, CTSL, DDX5, G6PD, and SNRPF, preferably gene sequences STC1, GPR65, DOCK10, COL5A2, FAM46A, and LOC54103, and most preferably gene sequences STC1, GPR65, DOCK10, COL5A2, FAM46A, and LOC54103, whose expression indicates chemosensitivity to Mitomycin.
i) One or more of the gene sequences RPS23, SFRS3, KIAA0114, RPL39, SFRS3, LOC51035, RPS6, EXOSC2, RPL35, IFRD2, SMN2, EEF1A1, RPS3, RPS18, and RPS7, preferably gene sequences RPL10, RPS4X, NUDC, RALY, DKCl, DKFZP564C186, PRP19, RAB9P40, HSA9761, GMDS, CEP1, IL13RA2, MAGEB2, HMGN2, ALMS1, GPR65, FLJ10774, NOL8, DAZAP1, SLC25A15, PAF53, DXS9879E, PITPNC1, SPANXC, and KIAA1393, and most preferably RPL10, RPS4X, NUDC, DKCl, DKFZP564C186, PRP19, RAB9P40, HSA9761, GMDS, CEP1, IL13RA2, MAGEB2, HMGN2, ALMS1, GPR65, FLJ10774, NOL8, DAZAP1, SLC25A15, PAF53, DXS9879E, PITPNC1, SPANXC, and KIAA1393, whose expression indicates chemosensitivity to Paclitaxel.
j) One or more of the gene sequences CSDA, LAMR1, and TUBA3, preferably gene sequences PFN1, PGAM1, K-ALPHA-1, CSDA, UCHL1, PWP1, PALM2-AKAP2, TNFRSF1A, ATP5G2, AF1Q, NME4, and FHOD1, and most preferably gene sequences PFN1, PGAM1, K-ALPHA-1, CSDA, UCHL1, PWP1, PALM2-AKAP2, TNFRSF1A, ATP5G2, AF1Q, NME4, and FHOD1, whose expression indicates chemosensitivity to Gemcitabine.
k) One or more of the gene sequences RPS23, SFRS3, KIAA0114, SFRS3, RPS6, DDX39, and RPS7, preferably gene sequences ANP32B, GTF3A, RRM2, TRIM14, SKP2, TRIP13, RFC3, CASP7, TXN, MCM5, PTGES2, OBFC1, EPB41L4B, and CALML4, and most preferably gene sequences ANP32B, GTF3A, RRM2, TRIM14, SKP2, TRIP13, RFC3, CASP7, TXN, MCM5, PTGES2, OBFC1, EPB41L4B, and CALML4, whose expression indicates chemosensitivity to Taxotere.
l) One or more of the gene sequences IL2RG, H1FX, RDBP, ZAP70, CXCR4, TM4SF2, ARHGDIB, CDA, CD3E, STMN1, GNA15, AXL, CCND3, SATB1, EIF5A, LCK, NKX2-5, LAPTM5, IQGAP2, FLII, EIF3S5, TRB, CD3D, HOXB2, GATA3, HMGB2, PSMB9, ATP5G2, CORO1A, ARHGDIB, DRAP1, PTPRCAP, RHOH, and ATP2A3, preferably gene sequences IFITM2, UBE2L6, LAPTM5, USP4, ITM2A, ITGB2, ANPEP, CD53, IL2RG, CD37, GPRASP1, PTPN7, CXorf9, RHOH, GIT2, ADORA2A, ZNFN1A1, GNA15, CEP1, TNFRSF7, MAP4K1, CCR7, CD3G, PTPRC, ATP2A3, UCP2, CORO1A, GATA3, CDKN2A, HEM1, TARP, LAIR1, SH2D1A, FLII, SEPT6, HA-1, CREB3L1, ERCC2, CD3D, LST1, A1F1, ADA, DATF1, ARHGAP15, PLAC8, CECR1, LOC81558, and EHD2, and most preferably gene sequences IFITM2, UBE2L6, USP4, ITM2A, IL2RG, GPRASP1, PTPN7, CXorf9, RHOH, GIT2, ZNFN1A1, CEP1, TNFRSF7, MAP4K1, CCR7, CD3G, ATP2A3, UCP2, GATA3, CDKN2A, TARP, LAIR1, SH2D1A, SEPT6, HA-1, ERCC2, CD3D, LST1, A1F1, ADA, DATF1, ARHGAP15, PLAC8, CECR1, LOC81558, and EHD2, whose expression indicates chemosensitivity to Dexamethasone.
m) One or more of the gene sequences TM4SF2, ARHGDIB, ADA, H2AFZ, NAP1L1, CCND3, FABP5, LAMR1, REA, MCM5, SNRPF, and USP7, preferably gene sequences ITM2A, RHOH, PRIM1, CENTB1, GNA15, NAP1L1, ATP5G2, GATA3, PRKCQ, SH2D1A, SEPT6, PTPRC, NME4, RPL13, CD3D, CD1E, ADA, and FHOD1, and most preferably gene sequences ITM2A, RHOH, PRIM1, CENTB1, NAP1L1, ATP5G2, GATA3, PRKCQ, SH2D1A, SEPT6, NME4, CD3D, CD1E, ADA, and FHOD1, whose expression indicates chemosensitivity to Ara-C.
n) One or more of the gene sequences LGALS9, CD7, IL2RG, PTPN7, ARHGEF6, CENTB1, SEPT6, SLA, LCP1, IFITM1, ZAP70, CXCR4, TM4SF2, ZNF91, ARHGDIB, TFDP2, ADA, CD99, CD3E, CD1C, STMN1, CD53, CD7, GNA15, CCND3, MAZ, SATB1, ZNF22, AES, AIF1, MYB, LCK, C5orf13, NKX2-5, ZNFN1A1, STAT5A, CHI3L2, LAPTM5, MAP4K1, DDX11, GPSM3, TRB, CD3D, CD3G, PRKCB1, CD1E, HCLS1, GATA3, TCF7, RHOG, CDW52, HMGB2, DGKA, ITGB2, PSMB9, IDH2, AES, MCM5, NUCB2, CORO1A, ARHGDIB, PTPRCAP, CD47, RHOH, LGALS9, and ATP2A3, preferably gene sequences CD99, SRRM1, ARHGDIB, LAPTM5, VWF, ITM2A, ITGB2, LGALS9, INPPSD, SATB1, CD53, TFDP2, SLA, IL2RG, MFNG, CD37, GMFG, SELL, CDW52, LRMP, ICAM2, RIMS3, PTPN7, ARHGAP25, LCK, CXorf9, RHOH, PTPRCAP, GIT2, ZNFN1A1, CENTB1, LCP2, SPI1, GNA15, GZMA, CEP1, BLM, CD8A, SCAP1, CD2, CD1C, TNFRSF7, VAV1, MAP4K1, CCR7, C6orf32, ALOX15B, BRDT, CD3G, PTPRC, LTB, ATP2A3, NVL, RASGRP2, LCP1, CORO1A, CXCR4, PRKD2, GATA3, TRA@, PRKCB1, HEM1, KIAA0922, TARP, SEC31L2, PRKCQ, SH2D1A, CHRNA3, CD1A, LST1, LAIR1, CACNA1G, TRB@, SEPT6, HA-1, DOCK2, CD3D, TRD@, T3JAM, ENBP1, CD6, AIF1, FOLH1, CD1E, LY9, UGT2B17, ADA, CDKL5, TRIM, EVL, DATF1, RGC32, PRKCH, ARHGAP15, NOTCH1, BIN2, SEMA4G, DPEP2, CECR1, BCL11B, STAG3, GALNT6, UBASH3A, PHEMX, FLJ13373, LEF1, IL21R, MGC17330, AKAP13, ZNF335, and GIMAP5, and most preferably gene sequences CD99, ARHGDIB, VWF, ITM2A, LGALS9, INPP5D, SATB1, TFDP2, SLA, IL2RG, MFNG, SELL, CDW52, LRMP, ICAM2, RIMS3, PTPN7, ARHGAP25, LCK, CXorf9, RHOH, GIT2, ZNEN1A1, CENTB1, LCP2, SPI1, GZMA, CEP1, CD8A, SCAP1, CD2, CD1C, TNFRSF7, VAV1, MAP4K1, CCR7, C6orf32, ALOX15B, BRDT, CD3G, LTB, ATP2A3, NVL, RASGRP2, LCP1, CXCR4, PRKD2, GATA3, TRA@, KIAA0922, TARP, SEC31L2, PRKCQ, SH2D1A, CHRNA3, CD1A, LST1, LAIR1, CACNA1G, TRB@, SEPT6, HA-1, DOCK2, CD3D, TRD@, T3JAM, ENBP1, CD6, AIF1, FOLH1, CD1E, LY9, ADA, CDKL5, TRIM, EVL, DATF1, RGC32, PRKCH, ARHGAP15, NOTCH1, BIN2, SEMA4G, DPEP2, CECR1, BCL11B, STAG3, GALNT6, UBASH3A, PHEMX, FLJ13373, LEF1, IL21R, MGC17330, AKAP13, ZNF335, and GIMAP5, whose expression indicates chemosensitivity to Methylprednisolone.
o) One or more of the gene sequences RPLP2, RPL4, HMGA1, RPL27, IMPDH2, LAMR1, PTMA, ATPSB, NPM1, NCL, RPS25, RPL9, TRAP1, RPL21, LAMR1, REA, HNRPA1, LDHB, RPS2, NME1, PAICS, EEF1B2, RPS15A, RPL19, RPL6, ATP5G2, SNRPF, SNRPG, and RPS7, preferably gene sequences PRPF8, RPL18, RNPS1, RPL32, EEF1G, GOT2, RPL13A, PTMA, RPS15, RPLP2, CSDA, KHDRBS1, SNRPA, IMPDH2, RPS19, NUP88, ATPSD, PCBP2, ZNF593, HSU79274, PRIM1, PFDN5, OXA1L, H3F3A, ATIC, RPL13, CIAPIN1 FBL, RPS2, PCCB, RBMX, SHMT2, RPLP0, HNRPA1, STOML2, RPS9, SKB1, GLTSCR2, CCNB1IP1, MRPS2, FLJ20859, and FLJ12270, and most preferably gene sequences PRPF8, RPL18, GOT2, RPL13A, RPS15, RPLP2, CSDA, KHDRBS1, SNRPA, IMPDH2, RPS19, NUP88, ATP5D, PCBP2, ZNF593, HSU79274, PRIM1, PFDN5, OXA1L, H3F3A, ATIC, CIAPIN1, RPS2, PCCB, SHMT2, RPLP0, HNRPA1, STOML2, SKB1, GLTSCR2, CCNBHP1, MRPS2, FLJ20859, and FLJ12270, whose expression indicates chemosensitivity to Methotrexate.
p) One or more of the gene sequences ACTB, COL5A1, MT1E, CSDA, COL4A2, MMP2, COL1A1, TNFRSF1A, CFHL1, TGFBI, FSCN1, NNMT, PLAUR, CSPG2, NFIL3, C5orf13, NCOR2, TUBB4, MYLK, TUBA3, PLAU, COL4A2, COL6A2, COL6A3, IFITM2, PSMB9, CSDA, and COL1A1, preferably gene sequences MSN, PFN1, HK1, ACTR2, MCL1, ZYX, RAP1B, GNB2, EPAS1, PGAM1, CKAP4, DUSP1, MYL9, K-ALPHA-1, LGALS1, CSDA, AKR1B1, IFITM2, ITGA5, VIM, DPYSL3, JUNB, ITGA3, NFKBIA, LAMB1, FHL1, INSIG1, TIMP1, GJA1, PSME2, PRG1, EXT1, DKFZP434J154, OPTN, M6PRBP1, MVP, VASP, ARL7, NNMT, TAP1, COL1A1, BASP1, PLOD2, ATF3, PALM2-AKAP2, IL8, ANPEP, LOXL2, TGFB1, IL4R, DGKA, STC2, SEC61G, NFIL3, RGS3, NK4, F2R, TPM2, PSMB9, LOX, STC1, CSPG2, PTGER4, IL6, SMAD3, PLAU, WNT5A, BDNF, TNFRSF1A, FLNC, DKFZP564K0822, FLOT1, PTRF, HLA-B, COL6A2, MGC4083, TNFRSF10B, PLAGL1, PNMA2, TFPI, LAT, GZMB, CYR61, PLAUR, FSCN1, ERP70, AF1Q, UBC, FGFR1, HIC, BAX, COL4A2, COL6A1, IFITM3, MAP1B, FLJ46603, RAFTLIN, RRAS, FTL, KIAA0877, MT1E, CDC10, DOCK2, TRIM22, RIS1, BCAT1, PRF1, DBN1, MT1K, TMSB10, RAB31, FLJ10350, C1orf24, NME7, TMEM22, TPK1, COL5A2, ELK3, CYLD, ADAMTS1, EHD2, and ACTB, and most preferably gene sequences PFN1, HK1, MCL1, ZYX, RAP1B, GNB2, EPAS1, PGAM1, CKAP4, DUSP1, MYL9, K-ALPHA-1, LGALS1, CSDA, IFITM2, ITGA5, DPYSL3, JUNB, NFKBIA, LAMB1, FHL1, INSIG1, TIMP1, GJA1, PSME2, PRG1, EXT1, DKFZP434J154, MVP, VASP, ARL7, NNMT, TAP1, PLOD2, ATF3, PALM2-AKAP2, IL8, LOXL2, IL4R, DGKA, STC2, SEC61G, RGS3, F2R, TPM2, PSMB9, LOX, STC1, PTGER4, IL6, SMAD3, WNT5A, BDNF, TNFRSF1A, FLNC, DKFZP564K0822, FLOT1, PTRF, HLA-B, MGC4083, TNFRSF10B, PLAGL1, PNMA2, TFPI, LAT, GZMB, CYR61, PLAUR, FSCN1, ERP70, AF1Q, HIC, COL6A1, IFITM3, MAP1B, FLJ46603, RAFTLIN, RRAS, FTL, KIAA0877, MT1E, CDC10, DOCK2, TRIM22, RIS1, BCAT1, PRF1, DBN1, MT1K, TMSB10, FLJ10350, C1orf24, NME7, TMEM22, TPK1, COL5A2, ELK3, CYLD, ADAMTS1, EHD2, and ACTB, whose expression indicates chemosensitivity to Bleomycin.
q) One or more of the gene sequences NOS2A, MUC1, TFF3, GP1BB, IGLL1, BATF, MYB, PTPRS, NEFL, AlP, CEL, DGKA, RUNX1, ACTR1A, and CLCNKA, preferably gene sequences PTMA, SSRP1, NUDC, CTSC, AP1G2, PSME2, LBR, EFNB2, SERPINA1, SSSCA1, EZH2, MYB, PRIM1, H2AFX, HMGA1, HMMR, TK2, WHSC1, DIAPH1, LAMB3, DPAGT1, UCK2, SERPINB1, MDN1, BRRN1, G0S2, RAC2, MGC21654, GTSE1, TACC3, PLEK2, PLAC8, HNRPD, and PNAS-4, and most preferably gene sequences SSRP1, NUDC, CTSC, AP1G2, PSME2, LBR, EFNB2, SERPINA1, SSSCA1, EZH2, MYB, PRIM1, H2AFX, HMGA1, HMMR, TK2, WHSC1, DIAPH1, LAMB3, DPAGT1, UCK2, SERPINB1, MDN1, BRRN1, G0S2, RAC2, MGC21654, GTSE1, TACC3, PLEK2, PLAC8, HNRPD, and PNAS-4, whose expression indicates chemosensitivity to Methyl-GAG.
r) One or more of the gene sequences MSN, ITGA5, VIM, TNFAIP3, CSPG2, WNT5A, FOXF2, LOC94105, IFI16, LRRN3, FGFR1, DOCK10, LEPRE1, COL5A2, and ADAMTS1, and most preferably gene sequences ITGA5, TNFAIP3, WNT5A, FOXF2, LOC94105, IFI16, LRRN3, DOCK10, LEPRE1, COL5A2, and ADAMTS1, whose expression indicates chemosensitivity to carboplatin.
s) One or more of the gene sequences RPL18, RPL10A, RNPS1, ANAPC5, EEF1B2, RPL13A, RPS15, AKAP1, NDUFAB1, APRT, ZNF593, MRP63, IL6R, RPL13, SART3, RPS6, UCK2, RPL3, RPL17, RPS2, PCCB, TOMM20, SHMT2, RPLP0, GTF3A, STOML2, DKFZp564J157, MRPS2, ALG5, and CALML4, and most preferably gene sequences RPL18, RPL10A, ANAPC5, EEF1B2, RPL13A, RPS15, AKAP1, NDUFAB1, APRT, ZNF593, MRP63, IL6R, SART3, UCK2, RPL17, RPS2, PCCB, TOMM20, SHMT2, RPLP0, GTF3A, STOML2, DKFZp564J157, MRPS2, ALG5, and CALML4, whose expression indicates chemosensitivity to 5-FU (5-Fluorouracil).
t) One or more of the gene sequences ITK, KIFC1, VLDLR, RUNX1, PAFAH1B3, H1FX, RNF144, TMSNB, CRY1, MAZ, SLA, SRF, UMPS, CD3Z, PRKCQ, HNRPM, ZAP70, ADD1, RFC5, TM4SF2, PFN2, BMI1, TUBGCP3, ATP6V1B2, RALY, PSMC5, CD1D, ADA, CD99, CD2, CNP, ERG, MYL6, CD3E, CD1A, CD1B, STMN1, PSMC3, RPS4Y1, AKT1, TAL1, GNA15, UBE2A, TCF12, UBE2S, CCND3, PAX6, MDK, CAPG, RAG2, ACTN1, GSTM2, SATB1, NASP, IGFBP2, CDH2, CRABP1, DBN1, CTNNA1, AKR1C1, CACNB3, FARSLA, CASP2, CASP2, E2F4, LCP2, CASP6, MYB, SFRS6, GLRB, NDN, CPSF1, GNAQ, TUSC3, GNAQ, JARID2, OCRL, FHL1, EZH2, SMOX, SLC4A2, UFD1L, SEPW1, ZNF32, HTATSF1, SHD1, PTOV1, NXF1, FYB, TRIM28, BC008967, TRB@, TFRC, H1F0, CD3D, CD3G, CENPB, ALDH2, ANXA1, H2AFX, CD1E, DDX5, ABL1, CCNA2, ENO2, SNRPB, GATA3, RRM2, GLUL, TCF7, FGFR1, SOX4, MAL, NUCB2, SMA3, FAT, UNG, ARHGDIB, RUNX1, MPHOSPH6, DCTN1, SH3GL3, VIM, PLEKHCl, CD47, POLR2F, RHOH, ADD1, and ATP2A3, preferably gene sequences ITK, KIFC1, VLDLR, RUNX1, PAFAH1B3, H1FX, RNF144, TMSNB, CRY1, MAZ, SLA, SRF, UMPS, CD3Z, PRKCQ, HNRPM, ZAP70, ADD1, RFC5, TM4SF2, PFN2, BMI1, TUBGCP3, ATP6V1B2, RALY, PSMC5, CD1D, ADA, CD99, CD2, CNP, ERG, MYL6, CD3E, CD1A, CD1B, STMN1, PSMC3, RPS4Y1, AKT1, TAL1, GNA15, UBE2A, TCF12, UBE2S, CCND3, PAX6, MDK, CAPG, RAG2, ACTN1, GSTM2, SATB1, NASP, IGFBP2, CDH2, CRABP1, DBN1, CTNNA1, AKR1C1, CACNB3, FARSLA, CASP2, CASP2, E2F4, LCP2, CASP6, MYB, SFRS6, GLRB, NDN, CPSF1, GNAQ, TUSC3, GNAQ, JARID2, OCRL, FHL1, EZH2, SMOX, SLC4A2, UFD1L, SEPW1, ZNF32, HTATSF1, SHD1, PTOV1, NXF1, FYB, TRIM28, BC008967, TRB@, TFRC, H1F0, CD3D, CD3G, CENPB, ALDH2, ANXA1, H2AFX, CD1E, DDX5, ABL1, CCNA2, ENO2, SNRPB, GATA3, RRM2, GLUL, TCF7, FGFR1, SOX4, MAL, NUCB2, SMA3, FAT, UNG, ARHGDIB, RUNX1, MPHOSPH6, DCTN1, SH3GL3, VIM, PLEKHCl, CD47, POLR2F, RHOH, ADD1, and ATP2A3, and most preferably gene sequences KIFC1, VLDLR, RUNX1, PAFAH1B3, H1FX, RNF144, TMSNB, CRY1, MAZ, SLA, SRF, UMPS, CD3Z, PRKCQ, HNRPM, ZAP70, ADD1, RFC5, TM4SF2, PFN2, BMI1, TUBGCP3, ATP6V1B2, CD1D, ADA, CD99, CD2, CNP, ERG, CD3E, CD1A, PSMC3, RPS4Y1, AKT1, TALE UBE2A, TCF12, UBE2S, CCND3, PAX6, RAG2, GSTM2, SATB1, NASP, IGFBP2, CDH2, CRABP1, DBN1, AKR1C1, CACNB3, CASP2, CASP2, LCP2, CASP6, MYB, SFRS6, GLRB, NDN, GNAQ, TUSC3, GNAQ, JARID2, OCRL, FHL1, EZH2, SMOX, SLC4A2, UFD1L, ZNF32, HTATSF1, SHD1, PTOV1, NXF1, FYB, TRIM28, BC008967, TRB@, H1F0, CD3D, CD3G, CENPB, ALDH2, ANXA1, H2AFX, CD1E, DDX5, CCNA2, ENO2, SNRPB, GATA3, RRM2, GLUL, SOX4, MAL, UNG, ARHGDIB, RUNX1, MPHOSPH6, DCTN1, SH3GL3, PLEKHCl, CD47, POLR2F, RHOH, and ADD1, whose expression indicates chemosensitivity to Rituximab (e.g., MABTHERA™).
u) One or more of the gene sequences CCL21, ANXA2, SCARB2, MAD2L1BP, CAST, PTS, NBL1, ANXA2, CD151, TRAM2, HLA-A, CRIP2, UGCG, PRSS11, MME, CBR1, LGALS1, DUSP3, PFN2, MICA, FTH1, RHOC, ZAP128, PON2, COL5A2, CST3, MCAM, IGFBP3, MMP2, GALIG, CTSD, ALDH3A1, CSRP1, S100A4, CALD1, CTGF, CAPG, HLA-A, ACTN1, TAGLN, FSTL1, SCTR, BLVRA, COPEB, DIPA, SMARCD3, FN1, CTSL, CD63, DUSP1, CKAP4, MVP, PEA15, S100A13, and ECE1, preferably gene sequences TRA1, ACTN4, WARS, CALM1, CD63, CD81, FKBP1A, CALU, IQGAP1, CTSB, MGC8721, STAT1, TACC1, TM4SF8, CD59, CKAP4, DUSP1, RCN1, MGC8902, LGALS1, BHLHB2, RRBP1, PKM2, PRNP, PPP2CB, CNN3, ANXA2, IER3, JAK1, MARCKS, LUM, FER1L3, SLC20A1, EIF4G3, HEXB, EXT1, TJP1, CTSL, SLC39A6, RIOK3, CRK, NNMT, COL1A1, TRAM2, ADAM9, DNAJC7, PLSCR1, PRSS23, PLOD2, NPC1, TOB1, GFPT1, IL8, DYRK2, PYGL, LOXL2, KIAA0355, UGDH, NFIL3, PURA, ULK2, CENTG2, NID2, CAP350, CXCL1, BTN3A3, IL6, WNT5A, FOXF2, LPHN2, CDH11, P4HA1, GRP58, ACTN1, CAPN2, DSIPI, MAP1LC3B, GALIG, IGSF4, IRK, ATP2A2, OGT, TNFRSF10B, KIAA1128, TM4SF1, RBPMS, RIPK2, CBLB, NR1D2, BTN3A2, SLC7A11, MPZL1, IGFBP3, SSA2, FN1, NQO1, ASPH, ASAH1, MGLL, SERPINB6, HSPA5, ZFP36L1, COL4A2, COL4A1, CD44, SLC39A14, NIPA2, FKBP9, IL6ST, DKFZP564G2022, PPAP2B, MAP1B, MAPK1, MYO1B, CAST, RRAS2, QKI, LHFPL2, 38970, ARHE, KIAA1078, FTL, KIAA0877, PLCB1, KIAA0802, KPNB1, RAB3GAP, SERPINB1, TIMM17A, SOD2, HLA-A, NOMO2, L0055831, PHLDA1, TMEM2, MLPH, FAD104, LRRC5, RAB7L1, FLJ35036, DOCK10, LRP12, TXNDC5, CDCl4B, HRMT1L1, CORO1C, DNAJC10, TNPO1, LONP, AMIGO2, DNAPTP6, and ADAMTS1, and most preferably gene sequences TRA1, ACTN4, CALM1, CD63, FKBP1A, CALU, IQGAP1, MGC8721, STAT1, TACC1, TM4SF8, CD59, CKAP4, DUSP1, RCN1, MGC8902, LGALS1, BHLHB2, RRBP1, PRNP, IER3, MARCKS, LUM, FER1L3, SLC20A1, HEXB, EXT1, TJP1, CTSL, SLC39A6, RIOK3, CRK, NNMT, TRAM2, ADAM9, DNAJC7, PLSCR1, PRSS23, PLOD2, NPC1, TOB1, GFPT1, IL8, PYGL, LOXL2, KIAA0355, UGDH, PURA, ULK2, CENTG2, NID2, CAP350, CXCL1, BTN3A3, IL6, WNT5A, FOXF2, LPHN2, CDH11, P4HA1, GRP58, DSIPI, MAP1LC3B, GALIG, IGSF4, IRK, ATP2A2, OGT, TNFRSF10B, KIAA1128, TM4SF1, RBPMS, RIPK2, CBLB, NR1D2, SLC7A11, MPZL1, SSA2, NQO1, ASPH, ASAH1, MGLL, SERPINB6, HSPA5, ZFP36L1, COL4A1, CD44, SLC39A14, NIPA2, FKBP9, IL6ST, DKFZP564G2022, PPAP2B, MAP1B, MAPK1, MYO1B, CAST, RRAS2, QKI, LHFPL2, 38970, ARHE, KIAA1078, FTL, KIAA0877, PLCB1, KIAA0802, RAB3GAP, SERPINBE TIMM17A, SOD2, HLA-A, NOMO2, L0055831, PHLDA1, TMEM2, MLPH, FAD104, LRRC5, RAB7L1, FLJ35036, DOCK10, LRP12, TXNDC5, CDC14B, HRMT1L1, CORO1C, DNAJC10, TNPO1, LONP, AMIGO2, DNAPTP6, and ADAMTS1, whose expression indicates sensitivity to radiation therapy.
v) One or more of the gene sequences FAU, NOL5A, ANP32A, ARHGDIB, LBR, FABP5, ITM2A, SFRS5, IQGAP2, SLC7A6, SLA, IL2RG, MFNG, GPSM3, PIM2, EVER1, LRMP, ICAM2, RIMS3, FMNL1, MYB, PTPN7, LCK, CXorf9, RHOH, ZNFN1A1, CENTB1, LCP2, DBT, CEP1, IL6R, VAV1, MAP4K1, CD28, PTP4A3, CD3G, LTB, USP34, NVL, CD8B1, SFRS6, LCP1, CXCR4, PSCDBP, SELPLG, CD3Z, PRKCQ, CD1A, GATA2, P2RX5, LAIR1, C1orf38, SH2D1A, TRB@, SEPT6, HA-1, DOCK2, WBSCR20C, CD3D, RNASE6, SFRS7, WBSCR20A, NUP210, CD6, HNRPA1, AIF1, CYFIP2, GLTSCR2, Cllorf2, ARHGAP15, BIN2, SH3TC1, STAG3, TM6SF1, C15orf25, FLJ22457, PACAP, and MGC2744, whose expression indicates sensitivity to an HDAC inhibitor.
w) One or more of the gene sequences CD99, SNRPA, CUGBP2, STAT5A, SLA, IL2RG, GTSE1, MYB, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTB1, LCP2, HIST1H4C, CCR7, APOBEC3B, MCM7, LCP1, SELPLG, CD3Z, PRKCQ, GZMB, SCN3A, LAIR1, SH2D1A, SEPT6, CG018, CD3D, C18orf10, PRF1, AIF1, MCM5, LPXN, C22orf18, ARHGAP15, and LEF1, whose expression indicates sensitivity to 5-Aza-2′-deoxycytidine (Decitabine).
Probes that may be employed on microarrays of the invention include oligonucleotide probes having sequences complementary to any of the biomarker gene or microRNA sequences described above. Additionally, probes employed on microarrays of the invention may also include proteins, peptides, or antibodies that selectively bind any of the oligonucleotide probe sequences or their complementary sequences. Exemplary probes are listed in Tables 22-44, wherein for each treatment listed, the biomarkers indicative of treatment sensitivity, the correlation of biomarker expression to growth inhibition, and the sequence of an exemplary probe (Tables 22-44) to detect biomarker (Tables 1-21) expression are shown.
Identification of Biomarker Genes
The gene expression measurements of the NCI60 cancer cell lines were obtained from the National Cancer Institute and the Massachusetts Institute of Technology (MIT). Each dataset was normalized so that sample expression measured by different chips could be compared. The preferred method of normalization is the logit transformation, which is performed for each gene y on each chip:
logit(y)=log [(y−background)/(saturation−y)],
where background is calculated as the minimum intensity measured on the chip minus 0.1% of the signal intensity range: min-0.001*(max-min), and saturation is calculated as the maximum intensity measured on the chip plus 0.1% of the signal intensity range: max+0.001*(max−min). The resulting logit transformed data is then z-transformed to mean zero and standard deviation 1.
Next, gene expression is correlated to cancer cell growth inhibition. Growth inhibition data (GI50) of the NCI60 cell lines in the presence of any one of thousands of tested compounds was obtained from the NCI. The correlation between the logit-transformed expression level of each gene in each cell line and the logarithm of GI50 (the concentration of a given compound that results in a 50% inhibition of growth) can be calculated, e.g., using the Pearson correlation coefficient or the Spearman Rank-Order correlation coefficient. Instead of using GI50s, any other measure of patient sensitivity to a given compound may be correlated to the patient's gene expression. Since a plurality of measurements may be available for a single gene, the most accurate determination of correlation coefficient was found to be the median of the correlation coefficients calculated for all probes measuring expression of the same gene.
The median correlation coefficient of gene expression measured on a probe to growth inhibition or patient sensitivity is calculated for all genes, and genes that have a median correlation above 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 0.95, or 0.99 are retained as biomarker genes. Preferably, the correlation coefficient of biomarker genes will exceed 0.3. This is repeated for all the compounds to be tested. The result is a list of marker genes that correlates to sensitivity for each compound tested.
Predicting Patient Sensitivity or Resistance to Medical Treatment
For a given compound, the biomarker whose expression has been shown to correlate to chemosensitivity can be used to classify a patient, e.g., a cancer patient, as sensitive to a medical treatment, e.g., administration of a chemotherapeutic agent or radiation. Using a tumor sample or a blood sample (e.g., in case of leukemia or lymphoma) from a patient, expression of the biomarker in the cells of the patient in the presence of the treatment agent is determined (using, for example, an RNA extraction kit, a DNA microarray and a DNA microarray scanner). The biomarker expression measurements are then logit transformed as described above. The sum of the expression measurements of the biomarkers is then compared to the median of the sums derived from a training set population of patients having the same tumor. If the sum of biomarker expression in the patient is closest to the median of the sums of expression in the surviving members of the training set, the patient is predicted to be sensitive to the compound or other medical treatment. If the sum of expression in the patient is closest to the median of the sums of expression in the non-surviving members of the training set, the patient is predicted to be resistant to the compound.
Machine learning techniques such as Neural Networks, Support Vector Machines, K Nearest Neighbor, and Nearest Centroids may also be employed to develop models that discriminate patients sensitive to treatment from those resistant to treatment using biomarker expression as model variables which assign each patient a classification as resistant or sensitive. Machine learning techniques used to classify patients using various measurements are described in U.S. Pat. No. 5,822,715; U.S. Patent Application Publication Nos. 2003/0073083, 2005/0227266, 2005/0208512, 2005/0123945, 2003/0129629, and 2002/0006613; and in Vapnik V N. Statistical Learning Theory, John Wiley & Sons, New York, 1998; Hastie et al., 2001, The Elements of Statistical Learning: Data Mining, Inference, and Prediction, Springer, N.Y.; Agresti, 1996, An Introduction to Categorical Data Analysis, John Wiley & Sons, New York; and V. Tresp et al., “Neural Network Modeling of Physiological Processes”, in Hanson S. J. et al. (Eds.), Computational Learning Theory and Natural Learning Systems 2, MIT Press, 1994, hereby incorporated by reference.
Other variables can be used to determine relative biomarker expression between a patient (e.g., a cancer patient) and a normal subject (e.g., a control subject), including but not limited to, measurement of biomarker DNA copy number and the identification of biomarker genetic mutations.
A more compact microarray can be designed using only the oligonucleotide probes having measurements yielding the median correlation coefficients with cancer cell growth inhibition. Thus, in this embodiment, only one probe needs to be used to measure expression of each biomarker. Biomarkers include polypeptides and metabolites thereof. A skilled artisan can use employ assays that measure changes in polypeptide biomarker expression (e.g., Western blot, immunofluorescent staining, and flow cytometry) to determine a patient's sensitivity to a treatment (e.g., chemotherapy, radiation therapy, or surgery).
Identifying a Subpopulation of Patients Sensitive to a Treatment for Cancer
The invention can also be used to identify a subpopulation of patients, e.g., cancer patients, that are sensitive to a compound or other medical treatment previously thought to be ineffective for the treatment of cancer. To this end, genes or microRNAs whose expression correlates to sensitivity to a compound or other treatment can be identified so that patients sensitive to a compound or other treatment may be identified. To identify such biomarkers, gene or microRNA expression within cell lines can be correlated to the growth of those cell lines in the presence of the same compound or other treatment. Preferably, genes or microRNAs whose expression correlates to cell growth with a correlation coefficient exceeding 0.3 may be considered possible biomarkers.
Alternatively, genes or microRNAs can be identified as biomarkers according to their ability to discriminate patients known to be sensitive to a treatment from those known to be resistant. The significance of the differences in gene or microRNA expression between the sensitive and resistant patients may be measured using, e.g., t-tests. Alternatively, naïve Bayesian classifiers may be used to identify gene biomarkers that discriminate sensitive and resistant patient subpopulations given the gene expressions of the sensitive and resistant subpopulations within a treated patient population.
The patient subpopulations considered can be further divided into patients predicted to survive without treatment, patients predicted to die without treatment, and patients predicted to have symptoms without treatment. The above methodology may be similarly applied to any of these further defined patient subpopulations to identify biomarkers able to predict a subject's sensitivity to compounds or other treatments for the treatment of cancer.
Patients with elevated expression of biomarkers correlated to sensitivity to a compound or other medical treatment would be predicted to be sensitive to that compound or other medical treatment.
The invention is particularly useful for recovering compounds or other treatments that failed in clinical trials by identifying sensitive patient subpopulations using the gene or microRNA expression methodology disclosed herein to identify biomarkers that can be used to predict clinical outcome.
Kit, Apparatus, and Software for Clinical Use
This invention can also be used to predict patients who are resistant or sensitive to a particular treatment by using a kit that includes a kit for RNA extraction from tumors (e.g., Trizol from Invitrogen Inc.), a kit for RNA amplification (e.g., MessageAmp from Ambion Inc.), a microarray for measuring biomarker expression (e.g., HG-U133A GeneChip from Affymetrix Inc.), a microarray hybridization station and scanner (e.g., GeneChip System 3000Dx from Affymetrix Inc.), and software for analyzing the expression of marker genes as described in herein (e.g., implemented in R from R-Project or S-Plus from Insightful Corp.).
Methodology of the In Vitro Cancer Growth Inhibition Screen
The human tumor cell lines of the cancer screening panel are grown in RPMI 1640 medium containing 5% fetal bovine serum and 2 mM L-glutamine. Cells are inoculated into 96 well microtiter plates in 100 μL at plating densities ranging from 5,000 to 40,000 cells/well depending on the doubling time of individual cell lines. After cell inoculation, the microtiter plates are incubated at 37° C., 5% CO2, 95% air, and 100% relative humidity for 24 hrs prior to addition of experimental compounds.
After 24 hrs, two plates of each cell line are fixed in situ with TCA, to represent a measurement of the cell population for each cell line at the time of compound addition (Tz). Experimental compounds are solubilized in dimethyl sulfoxide at 400-fold the desired final maximum test concentration and stored frozen prior to use. At the time of compound addition, an aliquot of frozen concentrate is thawed and diluted to twice the desired final maximum test concentration with complete medium containing 50 μg/mL Gentamicin. Additional four, 10-fold or ½ log serial dilutions are made to provide a total of five compound concentrations plus control. Aliquots of 100 μL of these different compound dilutions are added to the appropriate microtiter wells already containing 100 μL of medium, resulting in the required final compound concentrations.
Following compound addition, the plates are incubated for an additional 48 hrs at 37° C., 5% CO2, 95% air, and 100% relative humidity. For adherent cells, the assay is terminated by the addition of cold TCA. Cells are fixed in situ by the gentle addition of 50 μL of cold 50% (w/v) TCA (final concentration, 10% TCA) and incubated for 60 min at 4° C. The supernatant is discarded, and the plates are washed five times with tap water and air-dried. Sulforhodamine B (SRB) solution (100 μL) at 0.4% (w/v) in 1% acetic acid is added to each well, and plates are incubated for 10 min at room temperature. After staining, unbound dye is removed by washing five times with 1% acetic acid and the plates are air-dried. Bound stain is subsequently solubilized with 10 mM trizma base, and the absorbance is read on an automated plate reader at a wavelength of 515 nm. For suspension cells, the methodology is the same except that the assay is terminated by fixing settled cells at the bottom of the wells by gently adding 50 μL of 80% TCA (final concentration, 16% TCA). Using the seven absorbance measurements [time zero, (Tz), control growth, (C), and test growth in the presence of compound at the five concentration levels (Ti)], the percentage growth is calculated at each of the compound concentrations levels. Percentage growth inhibition is calculated as:
[(Ti−Tz)/(C−Tz)]×100 for concentrations for which Ti>/=Tz
[(Ti−Tz)/Tz]×100 for concentrations for which Ti<Tz
Three dose response parameters are calculated for each experimental agent. Growth inhibition of 50% (GI50) is calculated from [(Ti−Tz)/(C−Tz)]×100=50, which is the compound concentration resulting in a 50% reduction in the net protein increase (as measured by SRB staining) in control cells during the compound incubation. The compound concentration resulting in total growth inhibition (TGI) is calculated from Ti=Tz. The LC50 (concentration of compound resulting in a 50% reduction in the measured protein at the end of the compound treatment as compared to that at the beginning) indicating a net loss of cells following treatment is calculated from [(Ti−Tz)/Tz]×100=−50. Values are calculated for each of these three parameters if the level of activity is reached; however, if the effect is not reached or is exceeded, the value for that parameter is expressed as greater or less than the maximum or minimum concentration tested.
RNA Extraction and Gene Expression Measurement
Cell/tissue samples are snap frozen in liquid nitrogen until processing. RNA is extracted using e.g., Trizol Reagent (Invitrogen) following manufacturers instructions. RNA is amplified using e.g., MessageAmp kit (Ambion) following manufacturers instructions. Amplified RNA is quantified using e.g., HG-U133A GeneChip (Affymetrix) and compatible apparatus e.g., GCS3000Dx (Affymetrix), using manufacturers instructions.
The resulting gene expression measurements are further processed as described in this document. The procedures described can be implemented using R software available from R-Project and supplemented with packages available from Bioconductor.
For many drugs 10-30 biomarkers are sufficient to give an adequate response, thus, given the relatively small number of biomarkers required, procedures, such as quantitative reverse transcriptase polymerase chain reaction (qRT-PCR), can be performed to measure, with greater precision, the amount of biomarker genes expressed in a sample. This will provide an alternative to or a complement to microarrays so that a single companion test, typically more quantitative than microarrays alone, employing biomarkers of the invention can be used to predict sensitivity to a new drug. qRT-PCR can be performed alone or in combination with a microarray described herein. Procedures for performing qRT-PCR are described in, e.g., U.S. Pat. No. 7,101,663 and U.S. Patent Application Nos. 2006/0177837 and 2006/0088856. The methods of the invention are readily applicable to newly discovered drugs as well as drugs described herein.
The following examples are provided so that those of ordinary skill in the art can see how to use the methods and kits of the invention. The examples are not intended to limit the scope of what the inventor regards as their invention.
EXAMPLES Example 1 Identification of Gene Biomarkers for Chemosensitivity to Common Chemotherapy Drugs
DNA chip measurements of the 60 cancer cell lines of the NCI60 data set were downloaded from the Broad Institute (Cambridge, Mass.) and logit normalized. Growth inhibition data of thousands of compounds against the same cell lines were downloaded from the National Cancer Institute. Compounds where the difference concentration to achieve 50% in growth inhibition (GI50) was less than 1 log were deemed uninformative and rejected. Each gene's expression in each cell line was correlated to its growth (−log(GI50)) in those cell lines in the presence of a given compound. The median Pearson correlation coefficient was used when multiple expression measurements were available for a given gene, and genes having a median correlation coefficient greater than 0.3 were identified as biomarkers for a given compound.
Example 2 Prediction of Treatment Sensitivity for Brain Cancer Patients
DNA chip measurements of gene expression in tumors from 60 brain cancer patients were downloaded from the Broad Institute. All data files were logit normalized. For each of the common chemotherapy drugs Cisplatin, Vincristine, Adriamycine, Etoposide, Aclarubicine, Mitoxantrone and Azaguanine, the gene expression for the marker genes was summed. The sum was normalized by dividing by the standard deviation of all patients and compared to the median of the sums of patients who survived and the median of the sums of patients who died:
NormalizedSum ( compound ) = sum ( marker genes for compound ) sd ( sums of all patients ) Sensitivity ( compound ) = [ NormalizedSum ( compound ) - median ( NormalizedSumdeadpatients ( compound ) ) ] 2 - [ NormalizedSum ( compound ) - median ( NormalizedSumsurvivingpatients ( compound ) ) ] 2
FIGS. 2 and 3 show the resulting treatment sensitivity predictions for two of the 60 patients. All patients received Cisplatin and the prediction of survival amongst the 60 patients based on their Cisplatin chemosensitivity yielded the Kaplan-Meier survival curve shown in FIG. 4. The expression of the 16 Cisplatin biomarker genes was first reduced to 5 components (dimensions) using Independent Component Analysis (fastICA). Five different classification methods were trained on the five components from the 60 patients: K Nearest Neighbor with K=1, K Nearest Neighbor with K=3, Nearest Centroid, Support Vector Machine, and Neural Network. Chemosensitivity or sensitivity to radiation treatment was predicted by combining the classifications of the five methods wherein each classification method was assigned a single vote: unanimous chemosensitive/treatment sensitive prediction resulted in a prediction of chemosensitive/treatment sensitive. All other predictions resulted in a prediction of chemoresistant/treatment resistant. The performance of the combined classifier was validated using leave-one-out cross validation and the survival of the two predicted groups shown in FIG. 4. The survival rate of the patients predicted to be chemosensitive was higher than the patients predicted to be chemoresistant.
Example 3 Prediction of Chemosensitivity for Lymphoma (DLBCL) Patients
DNA chip measurements of gene expression in the tumors from 56 DLBCL (diffuse large B-cell lymphoma) patients were downloaded from the Broad Institute. All data files were logit normalized. All patients received Vincristine and Adriamycine and the prediction of survival amongst the 56 patients based on their Vincristine and Adriamycine chemosensitivity yielded the Kaplan-Meier survival curve shown in FIG. 5. The expression of the 33 Vincristine genes and 16 Adriamycine genes was first reduced to 3 components (dimensions) using Independent Component Analysis (fastICA). Five different classification methods were trained on the independent components from the 56 patients: K Nearest Neighbor with K=1, K Nearest Neighbor with K=3, Nearest Centroid, Support Vector Machine, and Neural Network. Chemosensitivity was predicted by combining the classifications of the five methods wherein each classification method was assigned a single vote: unanimous chemosensitive prediction resulted in a prediction of chemosensitive. All other predictions resulted in a prediction of chemoresistant. The performance of the combined classifier was validated using leave-one-out cross validation and the survival of the two predicted groups is shown in FIG. 5. The survival rate of the patients predicted to be chemosensitive was higher than the patients predicted to be chemoresistant.
Example 4 Prediction of Chemosensitivity for Lung Cancer Patients
DNA chip measurements of gene expression in the tumors from 86 lung cancer (adenocarcinoma) patients was downloaded from the University of Michigan, Ann Arbor. Of the 86 patients, 19 had Stage III of the disease and received adjuvant chemotherapy. Raw data was logit normalized. Instead of the combined classifier described for the brain cancer and lymphoma examples above, the sum of biomarker gene expression was calculated for each patient and used to discriminate chemosensitive and chemoresistant patients. For each patient, the gene expression of the 16 marker genes for Cisplatin sensitivity (all Stage III patients received Cisplatin after surgery) was summed. If the sum was closer to the median of the sums of the surviving patients, the patient was predicted to be sensitive to Cisplatin. If the sum was closest to the median of the sums of the non-surviving patients, the patient was predicted to be resistant to Cisplatin. The survival rates of the two predicted groups are shown in FIG. 6. The survival rate of the patients predicted to be chemosensitive was higher than the patients predicted to be chemoresistant.
Example 5 Prediction of Rituximab Sensitivity for Lymphoma (DLBCL) Patients
The method is not limited to cytotoxic chemicals. It is also applicable to predicting the efficacy of protein therapeutics, such as monoclonal antibodies, approved for treating cancer. For example, the monoclonal antibody Rituximab (e.g., MABTHERA™ and RITUXAN™) was examined. Data for cytotoxicity of Rituximab in cell lines in vitro were obtained from published reports (Ghetie et al., Blood 97(5):1392-1398, 2001). This cytotoxicity in each cell line was correlated to the expression of genes in these cell lines (downloaded from the NCBI Gene Expression Omnibus database using accession numbers GSE2350, GSE1880, GDS181). The identified marker genes were used to predict the sensitivity of DLBCL to Rituximab in a small set of 14 patients treated with Rituximab and CHOP (R-CHOP) (downloaded from NCBI Gene Expression Omnibus under accession number GSE4475). Conversion between different chip types was performed using matching tables available through Affymetrix.
The survival of patients predicted to be sensitive to be R-CHOP is compared to the survival of patients predicted to be resistant to R-CHOP in FIG. 7. The survival rate of the patients predicted to be chemosensitive was higher than the patients predicted to be chemoresistant.
To predict the sensitivity toward combination therapies, such as those used to treat Diffuse Large B-cell Lymphoma (DLBCL), patient sensitivity to a particular combination therapy is predicted by combining the marker genes for the individual compounds used in the combination. An example of this is shown in FIG. 8, where the predicted sensitivities of one patient towards a number of combination therapies used against DLBCL (identified by their acronyms) are shown: R-CHOP contains Rituximab (e.g., MABTHERA™), Vincristine, Doxorubicin (Adriamycin), Cyclophosphamide, and Prednisolone; R-ICE contains Rituximab, Ifosfamide, Carboplatin, and Etoposide; R-MIME contains Rituximab, Mitoguazone, Ifosfamide, Methotrexate, and Etoposide; CHOEP contains Cyclophosphamide, Doxorubicin, Etoposide, Vincristine and Prednisone; DHAP contains Dexamethasone, Cytarabine (Ara C), and Cisplatin; ESHAP contains Etoposide, Methylprednisolone (Solumedrol), Cytarabine (Ara-C) and Cisplatin; and HOAP-Bleo contains Doxorubicin, Vincristine, Ara C, Prednisone, and Bleomycin.
Example 6 Prediction of Radiosensitivity for Brain Tumor (Medulloblastoma) Patients
The method of identifying biomarkers can also be applied to other forms of treatment such as radiation therapy. For example, sensitivity to radiation therapy was predicted for brain tumor patients. Radiation therapy in the form of craniospinal irradiation yielding 2,400-3,600 centiGray (cGy) with a tumor dose of 5,300-7,200 cGy was administered to the brain tumor patients using a medical device that emits beams of radiation. Sensitivity of the 60 cancer cell lines used in the NCI60 dataset to radiation treatment was obtained from published reports. This sensitivity was correlated to the expression of genes in the cell lines as described above to identify marker genes. DNA microarray measurements of gene expression in brain tumors obtained from patients subsequently treated with radiation therapy were obtained from the Broad Institute. The identified gene biomarkers were used to classify the patients as sensitive or resistant to radiation therapy. The survival of the patients in the two predicted categories is shown in FIG. 9. The survival rate of the patients predicted to be sensitive to radiation therapy was higher than the patients predicted to be resistant to radiation therapy.
Example 7 Drug Rescue
Every member of a population may not be equally responsive to a particular treatment. For example, new compounds often fail in late clinical trials because of lack of efficacy in the population tested. While such compounds may not be effective in the overall population, there may be subpopulations sensitive to those failed compounds due to various reasons, including inherent differences in gene expression. The method as described herein can be used to rescue failed compounds by identifying a patient subpopulation sensitive to a compound using their gene expression as an indicator. Subsequent clinical trials restricted to a sensitive patient subpopulation may demonstrate efficacy of a previously failed compound within that particular patient subpopulation, advancing the compound towards approval for use in that subpopulation.
To this end, in vitro measurements of the inhibitory effects of a compound on various cancer cell lines are compared to the gene expression of cells. The growth of the cancer cell samples can be correlated to gene expression measurements as described above. This will identify marker genes that can be used to predict patient sensitivity to the failed compound. Once biomarkers are identified, the expression of biomarker genes in cells obtained from patients can be measured according to the procedure detailed above. The patients are predicted to be responsive or non-responsive to compound treatment according to their gene biomarker expression profile. Clinical effect must then be demonstrated in the group of patients that are predicted to be sensitive to the failed compound.
The method may be further refined if patients responsive to the compound treatment are further subdivided into those predicted to survive without the compound and those predicted to die or suffer a relapse without the compound. Clinical efficacy in the subpopulation that is predicted to die or suffer relapse can be further demonstrated. Briefly, the gene expression at the time of diagnosis of patients who later die from their disease is compared to gene expression at the time of diagnosis of patients who are still alive after a period of time (e.g., 5 years). Genes differentially expressed between the two groups are identified as prospective biomarkers and a model is built using those gene biomarkers to predict treatment efficacy.
Examples of compounds that have failed in clinical trials include Gefinitib (e.g., Iressa, AstraZeneca) in refractory, advanced non-small-cell lung cancer (NSCLC), Bevacizumab (e.g., Avastin, Genentech) in first-line treatment for advanced pancreatic cancer, Bevacizumab (e.g., Avastin, Genentech) in relapsed metastatic breast cancer patients, and Erlotinib (e.g., Tarceva, Genentech) in metastatic non-small cell lung cancer (NSCLC). The method of the invention may be applied to these compounds, among others, so that sensitive patient subpopulations responsive to those compounds may be identified.
Example 8 Median of the Correlations Versus Correlation of the Median
The median of the correlations of the individual probe measurements to cancer cell growth as employed by the invention was compared to the correlation of the median probe measurements: this will determine at which step of the method a median calculation should be performed. In the former, several correlations are calculated for each gene since multiple probes measure a given gene's expression, but only the median of the correlation coefficients is finally retained to identify biomarkers. In the latter, only one correlation is calculated for each gene because only the median gene expression measurement is considered for each gene. FIG. 10 shows the results of using the correlation of the median expression measurements to identify biomarker genes of radiation sensitivity predicting the survival of 60 brain cancer patients. The difference in survival between the group predicted to be radiation sensitive and the group predicted to be radiation resistant in FIG. 10 is much smaller than the difference depicted in FIG. 9 which employed a median correlation coefficient suggesting that the invention's median of the correlations employed in FIG. 9 outperforms the correlation of the median depicted in FIG. 10.
If we look at individual marker genes like OMD, the median of the correlation to measured radiosensitivity of cell lines in vitro is 0.32. The correlation of the median, however, is 0.39. Adjusting the cutoff from 0.3 to 0.4 to compensate for the difference does not improve on FIG. 10, however.
We have also compared median correlation to weighted voting as proposed by Staunton et al., PNAS 98(19):10787-10792, 2001). Weighted voting produced a poor result similar to that of FIG. 10, with a P-value of 0.11.
Example 9 Other Methods of Identifying Biomarkers
The examples shown above all rely on the availability of measurements of inhibition by a compound or treatment of the growth of cell lines in vitro. Such measurements may not always be available or practical. In that case an alternative method of identifying biomarkers can be employed. If the target(s) of the compound is/are known, it is possible to build a model based on the gene expression of the known target(s). One example is the drug sunitinib (SU11248), for which eight targets are known. Sunitinib inhibits at least eight receptor protein-tyrosine kinases including vascular endothelial growth factor receptors 1-3 (VEGFR1-VEGFR3), platelet-derived growth factor receptors (PDGFRA and PDGFRB), stem cell factor receptor (Kit), Flt-3, and colony-stimulating factor-1 receptor (CSF-1R). U.S. Patent Application Publication 2006/0040292 mentions prediction of response measuring just two targets, PDGFRA and KIT. Using the sum of the gene expression of four targets it is possible to predict with more reliability the response to sunitinib. As an example, the predicted sunitinib sensitivity of cell lines HT29, U118, 786, and H226 is 0.24, 2.3, 0.14 and 0.60, respectively, based on the sum of the four targets PDGFRB, KDR, KIT and FLT3. This correlates well with the measured response in mouse xenografts of these cells (correlation coefficient 0.86) as well as with the measured anti-angiogenetic effect measured in mouse xenografts (Potapova et al. Contribution of individual targets to the antitumor efficacy of the multitargeted receptor tyrosine kinase inhibitor SU11248 (Mol. Cancer. Ther. 5(5):1280-9, 2006). This is better than a model based only on two targets PDGFRA and KIT (correlaton coefficient 0.56).
This four-gene predictor of sunitinib response can be applied to a large number of tumor samples from patients with different tumors from which gene expression analysis has been performed in order to get an idea of the range of sensitivities within each cancer type as well as which cancer types are most susceptible to treatment with sunitinib. FIG. 11 shows just a small fraction of the cancer samples available. The comparison is based on normalizing the samples in such a way (e.g., logit normalization) that different cancer types become comparable. Sunitinib is currently approved by the FDA for renal cancer and gastrointestinal cancer. Both kidney and colon show a good response in this plot.
Any other drug response response predictor based on gene expression can be tested in the same manner as shown in FIG. 11.
The approach of identifying biomarkers based on known targets can also be applied to RNA antagonists such as SPC2996 targeted against Bcl-2. A response predictor can be built based on measuring the gene expression of Bcl-2 in samples from cancer patients. The same approach can be used for the targets of all mRNA antagonists or inhibitors.
Example 10 Identifying Candidate Drugs for a Known Target
The methods of the invention described herein can also be used for identifying candidate drugs to a known target. Basically, the method of identifying biomarkers is run backwards in order to identify candidate drugs. If one starts with a known target, the expression of its corresponding gene is determined in the NCI 60 cell lines and correlated to the measured growth inhibition of all the thousands of drugs tested in the NCI 60 cell lines. This provides a list, ranked by correlation coefficient, of candidate drugs for the target. It is even possible to test new drugs and compare their correlation coefficient to the target gene expression to the correlation coefficients of the already tested drugs.
Example 11 Using microRNAs as Biomarkers of Drug Response
In recent years it has become clear that microRNAs (miRNA) play an important role in regulating the translation of mRNAs. As such, microRNAs may contain important information relevant for the prediction of drug sensitivity. This information may be complementary to the information contained in mRNA expression. Shown below is the correlation between predicted and measured chemosensitivity of the NCI 60 cell lines. The prediction is based either on mRNA measurements with DNA microarrays as described herein or predictions based on measurements of microRNA concentration (ArrayExpress accession number E-MEXP-1029) using a microRNA specific microarray (ArrayExpress accession number A-MEXP-620). Whenever more than one probe is used to determine the concentration of a given microRNA, the median correlation procedure is used for calculating correlation between microRNA concentration and −log(GI50).
miRNA mRNA Combined
cisplatin 0.16 0.02 0.21
PXD101 0.44 0.31 0.50
vincristine 0.06 0.11 0.26
etoposide 0.32 0.41 0.44
adriamycine 0.24 0.22 0.28

As the above table shows, the correlation (determined using leave-one-out cross-validation) is highest when using a combination (linear sum) of microRNA and mRNA predictions. These results suggest that a more accurate drug response predictor can be built using a combination of microRNA and mRNA. It is possible to measure both in the same experiment, as long as one takes into consideration that microRNAs in general do not have a polyA tail as mRNA does. Only slight modifications to the amplification and labeling methods used for mRNA may be needed to incorporate microRNAs into the analysis. Commercial kits for microRNA extraction, amplification, and labeling are available from suppliers (e.g., Ambion Inc.).
Tables 22A-76A list the microRNA probes that are useful for detection of sensitivity to individual drugs, as determined by their median correlation to −log(GI50) for the indicated drug.
Other Embodiments
All publications and patent applications mentioned in this specification are herein incorporated by reference to the same extent as if each independent publication or patent application was specifically and individually indicated to be incorporated by reference. While the invention has been described in connection with specific embodiments thereof, it will be understood that it is capable of further modifications and this application is intended to cover any variations, uses, or adaptations of the invention following, in general, the principles of the invention and including such departures from the present disclosure that come within known or customary practice within the art to which the invention pertains and may be applied to the essential features hereinbefore set forth.
Legend:
List2006: biomarkers identified in 2006 using the new U133A chip measurements
List2005: biomarkers listed in 2005 patent filing
HU6800: biomarkers obtained with old HU6800 chip measurements
List_Prior: matching biomakrers in prior art
List_Preferr: Prederred list of biomarkers
Correlation: The correlation of the biomarker to sensitivity to the compound
TABLE 1
Vincristine biomarkers
List_2006 List_2005 List_Prior List_Preferr Correlation
 [1,] UBB UBB 0.39
 [2,] RPS4X RPS4X 0.34
 [3,] S100A4 S100A4 0.32
 [4,] NDUFS6 NDUFS6 0.31
 [5,] B2M B2M 0.35
 [6,] C14orf139 C14orf139 0.3
 [7,] MAN1A1 MAN1A1 0.33
 [8,] SLC25A5 SLC25A5 SLC25A5 0.32
 [9,] RPL10 RPL10 0.38
[10,] RPL12 RPL12 0.31
[11,] EIF5A EIF5A 0.31
[12,] RPL36A RPL36A RPL36A 0.3
[13,] SUI1 SUI1 0.33
[14,] BLMH BLMH 0.32
[15,] CTBP1 CTBP1 0.32
[16,] TBCA TBCA 0.3
[17,] MDH2 MDH2 0.34
[18,] DXS9879E DXS9879E 0.35
[19,] SFRS3
[20,] CCT5
[21,] RPL39
[22,] UBE2S
[23,] EEF1A1
[24,] COX7B
[25,] RPLP2
[26,] RPL24
[27,] RPS23
[28,] RPL18
[29,] NCL
[30,] RPL9
[31,] RPL10A
[32,] RPS10
[33,] EIF3S2
[34,] SHFM1
[35,] RPS28
[36,] REA
[37,] GAPD
[38,] HNRPA1
[39,] RPS11
[40,] LDHB
[41,] RPL3
[42,] RPL11
[43,] MRPL12
[44,] RPL18A
[45,] RPS7
TABLE 2
Cisplatin biomarkers
Cor-
List_2006 List_2005 List_Prior List_Preferr relation
 [1,] C1QR1 C1QR1 0.3
 [2,] HCLS1 HCLS1 HCLS1 0.33
 [3,] CD53 CD53 0.35
 [4,] SLA SLA 0.37
 [5,] PTPN7 PTPN7 PTPN7 0.31
 [6,] PTPRCAP PTPRCAP 0.32
 [7,] ZNFN1A1 ZNFN1A1 0.33
 [8,] CENTB1 CENTB1 0.37
 [9,] PTPRC PTPRC 0.36
[10,] IFI16 IFI16 IFI16 0.31
[11,] ARHGEF6 ARHGEF6 0.35
[12,] SEC31L2 SEC31L2 0.32
[13,] CD3Z CD3Z 0.32
[14,] GZMB GZMB 0.3
[15,] CD3D CD3D 0.34
[16,] MAP4K1 MAP4K1 0.32
[17,] GPR65 GPR65 0.39
[18,] PRF1 PRF1 0.31
[19,] ARHGAP15 ARHGAP15 0.35
[20,] TM6SF1 TM6SF1 0.41
[21,] TCF4 TCF4 0.4
[22,] GAPD
[23,] ARHGDIB
[24,] RPS27
[25,] C5orf13
[26,] LDHB
[27,] SNRPF
[28,] B2M
[29,] FTL
[30,] NCL
[31,] MSN
[32,] XPO1
TABLE 3
Azaguanine biomarkers
List_2006 List_2005 List_Prior List_Preferr Correlation
 [1,] MSN MSN MSN 0.36
 [2,] SPARC SPARC SPARC 0.48
 [3,] VIM VIM VIM 0.47
 [4,] SRM SRM SRM 0.32
 [5,] SCARB1 SCARB1 0.4
 [6,] SIAT1 SIAT1 0.31
 [7,] CUGBP2 CUGBP2 0.37
 [8,] GAS7 GAS7 0.34
 [9,] ICAM1 ICAM1 0.43
[10,] WASPIP WASPIP 0.44
[11,] ITM2A ITM2A 0.31
[12,] PALM2-AKAP2 PALM2-AKAP2 0.31
[13,] ANPEP ANPEP 0.33
[14,] PTPNS1 PTPNS1 0.39
[15,] MPP1 MPP1 0.32
[16,] LNK LNK 0.43
[17,] FCGR2A FCGR2A 0.3
[18,] EMP3 EMP3 EMP3 0.33
[19,] RUNX3 RUNX3 0.43
[20,] EVI2A EVI2A 0.4
[21,] BTN3A3 BTN3A3 0.4
[22,] LCP2 LCP2 0.34
[23,] BCHE BCHE 0.35
[24,] LY96 LY96 0.47
[25,] LCP1 LCP1 0.42
[26,] IFI16 IFI16 0.33
[27,] MCAM MCAM MCAM 0.37
[28,] MEF2C MEF2C 0.41
[29,] SLC1A4 SLC1A4 0.49
[30,] BTN3A2 BTN3A2 0.43
[31,] FYN FYN 0.31
[32,] FN1 FN1 FN1 0.33
[33,] C1orf38 C1orf38 0.37
[34,] CHS1 CHS1 0.33
[35,] CAPN3 CAPN3 0.5
[36,] FCGR2C FCGR2C 0.34
[37,] TNIK TNIK 0.35
[38,] AMPD2 AMPD2 0.3
[39,] SEPT6 SEPT6 0.41
[40,] RAFTLIN RAFTLIN 0.39
[41,] SLC43A3 SLC43A3 0.52
[42,] RAC2 RAC2 0.33
[43,] LPXN LPXN 0.54
[44,] CKIP-1 CKIP-1 0.33
[45,] FLJ10539 FLJ10539 0.33
[46,] FLJ35036 FLJ35036 0.36
[47,] DOCK10 DOCK10 0.3
[48,] TRPV2 TRPV2 0.31
[49,] IFRG28 IFRG28 0.3
[50,] LEF1 LEF1 0.31
[51,] ADAMTS1 ADAMTS1 0.36
[52,] PRPS1
[53,] DDOST
[54,] B2M
[55,] LGALS1
[56,] CBFB
[57,] SNRPB2
[58,] EIF2S2
[59,] HPRT1
[60,] FKBP1A
[61,] GYPC
[62,] UROD
[63,] HNRPA1
[64,] SND1
[65,] COPA
[66,] MAPRE1
[67,] EIF3S2
[68,] ATP1B3
[69,] ECM1
[70,] ATOX1
[71,] NARS
[72,] PGK1
[73,] OK/SW-cl.56
[74,] EEF1A1
[75,] GNAI2
[76,] RPL7
[77,] PSMB9
[78,] GPNMB
[79,] PPP1R11
[80,] MIA
[81,] RAB7
[82,] SMS
TABLE 4
Etoposide biomarkers
List_2006 List_2005 List_Prior List_Preferr Correlation
 [1,] CD99 CD99 CD99 0.3
 [2,] INSIG1 INSIG1 0.35
 [3,] LAPTM5 LAPTM5 0.32
 [4,] PRG1 PRG1 0.34
 [5,] MUF1 MUF1 0.35
 [6,] HCLS1 HCLS1 0.33
 [7,] CD53 CD53 0.32
 [8,] SLA SLA 0.37
 [9,] SSBP2 SSBP2 0.37
[10,] GNB5 GNB5 0.35
[11,] MFNG MFNG 0.33
[12,] GMFG GMFG 0.32
[13,] PSMB9 PSMB9 0.31
[14,] EVI2A EVI2A 0.41
[15,] PTPN7 PTPN7 0.3
[16,] PTGER4 PTGER4 0.3
[17,] CXorf9 CXorf9 0.3
[18,] PTPRCAP PTPRCAP 0.3
[19,] ZNFN1A1 ZNFN1A1 0.35
[20,] CENTB1 CENTB1 0.3
[21,] PTPRC PTPRC 0.31
[22,] NAP1L1 NAP1L1 0.31
[23,] HLA-DRA HLA-DRA 0.34
[24,] IFI16 IFI16 0.38
[25,] CORO1A CORO1A 0.3
[26,] ARHGEF6 ARHGEF6 0.33
[27,] PSCDBP PSCDBP 0.4
[28,] SELPLG SELPLG 0.35
[29,] LAT LAT 0.3
[30,] SEC31L2 SEC31L2 0.42
[31,] CD3Z CD3Z 0.36
[32,] SH2D1A SH2D1A 0.33
[33,] GZMB GZMB 0.34
[34,] SCN3A SCN3A 0.3
[35,] ITK ITK 0.35
[36,] RAFTLIN RAFTLIN 0.39
[37,] DOCK2 DOCK2 0.33
[38,] CD3D CD3D 0.31
[39,] RAC2 RAC2 0.34
[40,] ZAP70 ZAP70 0.35
[41,] GPR65 GPR65 0.35
[42,] PRF1 PRF1 0.32
[43,] ARHGAP15 ARHGAP15 0.32
[44,] NOTCH1 NOTCH1 0.31
[45,] UBASH3A UBASH3A 0.32
[46,] B2M
[47,] MYC
[48,] RPS24
[49,] PPIF
[50,] PBEF1
[51,] ANP32B
TABLE 5
Adriamycin biomarkers
Cor-
List_2006 List_2005 List_Prior List_Preferr relation
 [1,] CD99 CD99 CD99 0.41
 [2,] LAPTM5 LAPTM5 0.39
 [3,] ALDOC ALDOC 0.31
 [4,] HCLS1 HCLS1 0.32
 [5,] CD53 CD53 0.31
 [6,] SLA SLA 0.35
 [7,] SSBP2 SSBP2 0.34
 [8,] IL2RG IL2RG 0.38
 [9,] GMFG GMFG 0.32
[10,] CXorf9 CXorf9 0.32
[11,] RHOH RHOH 0.31
[12,] PTPRCAP PTPRCAP 0.32
[13,] ZNFN1A1 ZNFN1A1 0.43
[14,] CENTB1 CENTB1 0.36
[15,] TCF7 TCF7 0.32
[16,] CD1C CD1C 0.3
[17,] MAP4K1 MAP4K1 0.35
[18,] CD1B CD1B 0.39
[19,] CD3G CD3G 0.31
[20,] PTPRC PTPRC 0.38
[21,] CCR9 CCR9 0.34
[22,] CORO1A CORO1A 0.38
[23,] CXCR4 CXCR4 0.3
[24,] ARHGEF6 ARHGEF6 0.31
[25,] HEM1 HEM1 0.32
[26,] SELPLG SELPLG 0.31
[27,] LAT LAT 0.31
[28,] SEC31L2 SEC31L2 0.33
[29,] CD3Z CD3Z 0.37
[30,] SH2D1A SH2D1A 0.37
[31,] CD1A CD1A 0.4
[32,] LAIR1 LAIR1 0.39
[33,] ITK ITK 0.3
[34,] TRB@ TRB@ 0.34
[35,] CD3D CD3D 0.33
[36,] WBSCR20C WBSCR20C 0.34
[37,] ZAP70 ZAP70 0.33
[38,] IFI44 IFI44 0.32
[39,] GPR65 GPR65 0.31
[40,] AIF1 AIF1 0.3
[41,] ARHGAP15 ARHGAP15 0.37
[42,] NARF NARF 0.3
[43,] PACAP PACAP 0.32
[44,] KIAA0220
[45,] B2M
[46,] TOP2A
[47,] SNRPE
[48,] RPS27
[49,] HNRPA1
[50,] CBX3
[51,] ANP32B
[52,] DDX5
[53,] PPIA
[54,] SNRPF
[55,] USP7
TABLE 6
Aclarubicin biomarkers
List_2006 List_2005 List_Prior List_Preferr Correlation
 [1,] RPL12 RPL12 0.3
 [2,] RPL32 RPL32 0.37
 [3,] RPLP2 RPLP2 RPLP2 0.37
 [4,] MYB MYB MYB 0.31
 [5,] ZNFN1A1 ZNFN1A1 0.34
 [6,] SCAP1 SCAP1 0.33
 [7,] STAT4 STAT4 0.31
 [8,] SP140 SP140 0.4
 [9,] AMPD3 AMPD3 0.3
[10,] TNFAIP8 TNFAIP8 0.4
[11,] DDX18 DDX18 0.31
[12,] TAF5 TAF5 0.3
[13,] FBL FBL 0.41
[14,] RPS2 RPS2 0.34
[15,] PTPRC PTPRC 0.37
[16,] DOCK2 DOCK2 0.32
[17,] GPR65 GPR65 0.35
[18,] HOXA9 HOXA9 0.33
[19,] FLJ12270 FLJ12270 0.31
[20,] HNRPD HNRPD 0.4
[21,] LAMR1
[22,] RPS25
[23,] EIF5A
[24,] TUFM
[25,] HNRPA1
[26,] RPS9
[27,] ANP32B
[28,] EIF4B
[29,] HMGB2
[30,] RPS15A
[31,] RPS7
TABLE 7
Mitoxantrone biomarkers
Cor-
List_2006 List_2005 List_Prior List_Preferr relation
 [1,] PGAM1 PGAM1 0.32
 [2,] DPYSL3 DPYSL3 0.36
 [3,] INSIG1 INSIG1 0.32
 [4,] GJA1 GJA1 0.31
 [5,] BNIP3 BNIP3 0.31
 [6,] PRG1 PRG1 PRG1 0.39
 [7,] G6PD G6PD G6PD 0.34
 [8,] BASP1 BASP1 0.31
 [9,] PLOD2 PLOD2 0.34
[10,] LOXL2 LOXL2 0.31
[11,] SSBP2 SSBP2 0.36
[12,] C1orf29 C1orf29 0.35
[13,] TOX TOX 0.35
[14,] STC1 STC1 0.39
[15,] TNFRSF1A TNFRSF1A TNFRSF1A 0.34
[16,] NCOR2 NCOR2 NCOR2 0.3
[17,] NAP1L1 NAP1L1 NAP1L1 0.32
[18,] LOC94105 LOC94105 0.34
[19,] COL6A2 COL6A2 0.3
[20,] ARHGEF6 ARHGEF6 ARHGEF6 0.34
[21,] GATA3 GATA3 0.35
[22,] TFPI TFPI 0.31
[23,] LAT LAT 0.31
[24,] CD3Z CD3Z 0.37
[25,] AF1Q AF1Q 0.33
[26,] MAP1B MAP1B MAP1B 0.34
[27,] PTPRC PTPRC 0.31
[28,] PRKCA PRKCA 0.35
[29,] TRIM22 TRIM22 0.3
[30,] CD3D CD3D 0.31
[31,] BCAT1 BCAT1 0.32
[32,] IFI44 IFI44 0.33
[33,] CCL2 CCL2 0.37
[34,] RAB31 RAB31 0.31
[35,] CUTC CUTC 0.33
[36,] NAP1L2 NAP1L2 0.33
[37,] NME7 NME7 0.35
[38,] FLJ21159 FLJ21159 0.33
[39,] COL5A2 COL5A2 0.38
[40,] B2M
[41,] OK/SW-cl.56
[42,] TOP2A
[43,] ELA2B
[44,] PTMA
[45,] LMNB1
[46,] HNRPA1
[47,] RPL9
[48,] C5orf13
[49,] ANP32B
[50,] TUBA3
[51,] HMGN2
[52,] PRPS1
[53,] DDX5
[54,] PPIA
[55,] PSMB9
[56,] SNRPF
TABLE 8
Mitomycin biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
[1,] STC1 STC1 0.34
[2,] GPR65 GPR65 0.32
[3,] DOCK10 DOCK10 0.35
[4,] COL5A2 COL5A2 0.33
[5,] FAM46A FAM46A 0.36
[6,] LOC54103 LOC54103 0.39
TABLE 9
Paclitaxel (Taxol) biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] RPL10 RPL10 0.31
 [2,] RPS4X RPS4X 0.31
 [3,] NUDC NUDC 0.3
 [4,] RALY RALY 0.31
 [5,] DKC1 DKC1 0.3
 [6,] DKFZP564C186 DKFZP564C186 0.32
 [7,] PRP19 PRP19 0.31
 [8,] RAB9P40 RAB9P40 0.33
 [9,] HSA9761 HSA9761 0.37
[10,] GMDS GMDS 0.3
[11,] CEP1 CEP1 0.3
[12,] IL13RA2 IL13RA2 0.34
[13,] MAGEB2 MAGEB2 0.41
[14,] HMGN2 HMGN2 0.35
[15,] ALMS1 ALMS1 0.3
[16,] GPR65 GPR65 0.31
[17,] FLJ10774 FLJ10774 0.31
[18,] NOL8 NOL8 0.31
[19,] DAZAP1 DAZAP1 0.32
[20,] SLC25A15 SLC25A15 0.31
[21,] PAF53 PAF53 0.36
[22,] DXS9879E DXS9879E 0.31
[23,] PITPNC1 PITPNC1 0.33
[24,] SPANXC SPANXC 0.3
[25,] KIAA1393 KIAA1393 0.33
TABLE 10
Gemcitabine (Gemzar) biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] PFN1 PFN1 0.37
 [2,] PGAM1 PGAM1 0.35
 [3,] K-ALPHA-1 K-ALPHA-1 0.34
 [4,] CSDA CSDA 0.31
 [5,] UCHL1 UCHL1 0.36
 [6,] PWP1 PWP1 0.37
 [7,] PALM2- PALM2- 0.31
AKAP2 AKAP2
 [8,] TNFRSF1A TNFRSF1A 0.31
 [9,] ATP5G2 ATP5G2 0.36
[10,] AF1Q AF1Q 0.31
[11,] NME4 NME4 0.31
[12,] FHOD1 FHOD1 0.32
TABLE 11
Taxotere (docetaxel) biomarkers
List_2006 List_2005 List_Prior List_Preferr Correlation
 [1,] ANP32B ANP32B 0.45
 [2,] GTF3A GTF3A 0.31
 [3,] RRM2 RRM2 0.31
 [4,] TRIM14 TRIM14 0.31
 [5,] SKP2 SKP2 0.33
 [6,] TRIP13 TRIP13 0.36
 [7,] RFC3 RFC3 0.45
 [8,] CASP7 CASP7 0.32
 [9,] TXN TXN 0.36
[10,] MCM5 MCM5 0.34
[11,] PTGES2 PTGES2 0.39
[12,] OBFC1 OBFC1 0.37
[13,] EPB41L4B EPB41L4B 0.32
[14,] CALML4 CALML4 0.31
TABLE 12
Dexamethasone biomarkers
Cor-
List_2006 HU6800 List_Prior List_Preferr relation
 [1,] IFITM2 IFITM2 0.38
 [2,] UBE2L6 UBE2L6 0.32
 [3,] LAPTM5 LAPTM5 LAPTM5 0.36
 [4,] USP4 USP4 0.33
 [5,] ITM2A ITM2A 0.38
 [6,] ITGB2 ITGB2 0.42
 [7,] ANPEP ANPEP 0.31
 [8,] CD53 CD53 0.34
 [9,] IL2RG IL2RG IL2RG 0.36
[10,] CD37 CD37 0.34
[11,] GPRASP1 GPRASP1 0.36
[12,] PTPN7 PTPN7 0.31
[13,] CXorf9 CXorf9 0.36
[14,] RHOH RHOH RHOH 0.33
[15,] GIT2 GIT2 0.31
[16,] ADORA2A ADORA2A 0.31
[17,] ZNFN1A1 ZNFN1A1 0.35
[18,] GNA15 GNA15 GNA15 0.33
[19,] CEP1 CEP1 0.31
[20,] TNFRSF7 TNFRSF7 0.46
[21,] MAP4K1 MAP4K1 0.3
[22,] CCR7 CCR7 0.33
[23,] CD3G CD3G 0.35
[24,] PTPRC PTPRC 0.41
[25,] ATP2A3 ATP2A3 ATP2A3 0.4
[26,] UCP2 UCP2 0.3
[27,] CORO1A CORO1A CORO1A 0.39
[28,] GATA3 GATA3 GATA3 0.37
[29,] CDKN2A CDKN2A 0.32
[30,] HEM1 HEM1 0.3
[31,] TARP TARP 0.3
[32,] LAIR1 LAIR1 0.34
[33,] SH2D1A SH2D1A 0.34
[34,] FLII FLII FLII 0.33
[35,] SEPT6 SEPT6 0.34
[36,] HA-1 HA-1 0.34
[37,] CREB3L1 CREB3L1 0.31
[38,] ERCC2 ERCC2 0.65
[39,] CD3D CD3D CD3D 0.32
[40,] LST1 LST1 0.39
[41,] AIF1 AIF1 0.35
[42,] ADA ADA 0.33
[43,] DATF1 DATF1 0.41
[44,] ARHGAP15 ARHGAP15 0.3
[45,] PLAC8 PLAC8 0.31
[46,] CECR1 CECR1 0.31
[47,] LOC81558 LOC81558 0.33
[48,] EHD2 EHD2 0.37
TABLE 13
Ara-C (Cytarabine hydrochloride) biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] ITM2A ITM2A 0.32
 [2,] RHOH RHOH 0.31
 [3,] PRIM1 PRIM1 0.3
 [4,] CENTB1 CENTB1 0.31
 [5,] GNA15 GNA15 0.32
 [6,] NAP1L1 NAP1L1 NAP1L1 0.31
 [7,] ATP5G2 ATP5G2 0.31
 [8,] GATA3 GATA3 0.33
 [9,] PRKCQ PRKCQ 0.32
[10,] SH2D1A SH2D1A 0.3
[11,] SEPT6 SEPT6 0.42
[12,] PTPRC PTPRC 0.35
[13,] NME4 NME4 0.33
[14,] RPL13 RPL13 0.3
[15,] CD3D CD3D 0.31
[16,] CD1E CD1E 0.32
[17,] ADA ADA ADA 0.34
[18,] FHOD1 FHOD1 0.31
TABLE 14
Methylprednisolone biomarkers
Cor-
List_2006 HU6800 List_Prior List_Preferr relation
 [1,] CD99 CD99 CD99 0.31
 [2,] SRRM1 SRRM1 0.31
 [3,] ARHGDIB ARHGDIB ARHGDIB 0.31
 [4,] LAPTM5 LAPTM5 LAPTM5 0.37
 [5,] VWF VWF 0.45
 [6,] ITM2A ITM2A 0.35
 [7,] ITGB2 ITGB2 ITGB2 0.43
 [8,] LGALS9 LGALS9 LGALS9 0.43
 [9,] INPP5D INPP5D 0.34
[10,] SATB1 SATB1 SATB1 0.32
[11,] CD53 CD53 CD53 0.33
[12,] TFDP2 TFDP2 TFDP2 0.4
[13,] SLA SLA SLA 0.31
[14,] IL2RG IL2RG IL2RG 0.3
[15,] MFNG MFNG 0.3
[16,] CD37 CD37 0.37
[17,] GMFG GMFG 0.4
[18,] SELL SELL 0.33
[19,] CDW52 CDW52 CDW52 0.33
[20,] LRMP LRMP 0.32
[21,] ICAM2 ICAM2 0.38
[22,] RIMS3 RIMS3 0.36
[23,] PTPN7 PTPN7 PTPN7 0.39
[24,] ARHGAP25 ARHGAP25 0.37
[25,] LCK LCK LCK 0.3
[26,] CXorf9 CXorf9 0.3
[27,] RHOH RHOH RHOH 0.51
[28,] PTPRCAP PTPRCAP PTPRCAP 0.5
[29,] GIT2 GIT2 0.33
[30,] ZNFN1A1 ZNFN1A1 ZNFN1A1 0.53
[31,] CENTB1 CENTB1 CENTB1 0.36
[32,] LCP2 LCP2 0.34
[33,] SPI1 SPI1 0.3
[34,] GNA15 GNA15 GNA15 0.39
[35,] GZMA GZMA 0.31
[36,] CEP1 CEP1 0.37
[37,] BLM BLM 0.33
[38,] CD8A CD8A 0.38
[39,] SCAP1 SCAP1 0.32
[40,] CD2 CD2 0.48
[41,] CD1C CD1C CD1C 0.37
[42,] TNFRSF7 TNFRSF7 0.31
[43,] VAV1 VAV1 0.41
[44,] MAP4K1 MAP4K1 MAP4K1 0.36
[45,] CCR7 CCR7 0.37
[46,] C6orf32 C6orf32 0.38
[47,] ALOX15B ALOX15B 0.43
[48,] BRDT BRDT 0.33
[49,] CD3G CD3G CD3G 0.51
[50,] PTPRC PTPRC 0.37
[51,] LTB LTB 0.32
[52,] ATP2A3 ATP2A3 ATP2A3 0.3
[53,] NVL NVL 0.31
[54,] RASGRP2 RASGRP2 0.35
[55,] LCP1 LCP1 LCP1 0.34
[56,] CORO1A CORO1A CORO1A 0.41
[57,] CXCR4 CXCR4 CXCR4 0.3
[58,] PRKD2 PRKD2 0.33
[59,] GATA3 GATA3 GATA3 0.39
[60,] TRA@ TRA@ 0.4
[61,] PRKCB1 PRKCB1 PRKCB1 0.35
[62,] HEM1 HEM1 0.32
[63,] KIAA0922 KIAA0922 0.36
[64,] TARP TARP 0.49
[65,] SEC31L2 SEC31L2 0.32
[66,] PRKCQ PRKCQ 0.37
[67,] SH2D1A SH2D1A 0.33
[68,] CHRNA3 CHRNA3 0.5
[69,] CD1A CD1A 0.44
[70,] LST1 LST1 0.36
[71,] LAIR1 LAIR1 0.47
[72,] CACNA1G CACNA1G 0.33
[73,] TRB@ TRB@ TRB@ 0.31
[74,] SEPT6 SEPT6 SEPT6 0.33
[75,] HA-1 HA-1 0.42
[76,] DOCK2 DOCK2 0.32
[77,] CD3D CD3D CD3D 0.41
[78,] TRD@ TRD@ 0.38
[79,] T3JAM T3JAM 0.37
[80,] FNBP1 FNBP1 0.37
[81,] CD6 CD6 0.4
[82,] AIF1 AIF1 AIF1 0.31
[83,] FOLH1 FOLH1 0.45
[84,] CD1E CD1E CD1E 0.58
[85,] LY9 LY9 0.39
[86,] UGT2B17 UGT2B17 0.47
[87,] ADA ADA ADA 0.39
[88,] CDKL5 CDKL5 0.44
[89,] TRIM TRIM 0.38
[90,] EVL EVL 0.39
[91,] DATF1 DATF1 0.31
[92,] RGC32 RGC32 0.51
[93,] PRKCH PRKCH 0.3
[94,] ARHGAP15 ARHGAP15 0.34
[95,] NOTCH1 NOTCH1 0.36
[96,] BIN2 BIN2 0.31
[97,] SEMA4G SEMA4G 0.35
[98,] DPEP2 DPEP2 0.33
[99,] CECR1 CECR1 0.36
[100,]  BCL11B BCL11B 0.33
[101,]  STAG3 STAG3 0.41
[102,]  GALNT6 GALNT6 0.32
[103,]  UBASH3A UBASH3A 0.3
[104,]  PHEMX PHEMX 0.38
[105,]  FLJ13373 FLJ13373 0.34
[106,]  LEF1 LEF1 0.49
[107,]  IL21R IL21R 0.42
[108,]  MGC17330 MGC17330 0.33
[109,]  AKAP13 AKAP13 0.53
[110,]  ZNF335 ZNF335 0.3
[111,]  GIMAP5 GIMAP5 0.34
TABLE 15
Methotrexate biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] PRPF8 PRPF8 0.34
 [2,] RPL18 RPL18 0.34
 [3,] RNPS1 RNPS1 0.36
 [4,] RPL32 RPL32 0.39
 [5,] EEF1G EEF1G 0.34
 [6,] GOT2 GOT2 0.31
 [7,] RPL13A RPL13A 0.31
 [8,] PTMA PTMA PTMA 0.41
 [9,] RPS15 RPS15 0.39
[10,] RPLP2 RPLP2 RPLP2 0.32
[11,] CSDA CSDA 0.39
[12,] KHDRBS1 KHDRBS1 0.32
[13,] SNRPA SNRPA 0.31
[14,] IMPDH2 IMPDH2 IMPDH2 0.39
[15,] RPS19 RPS19 0.47
[16,] NUP88 NUP88 0.36
[17,] ATP5D ATP5D 0.33
[18,] PCBP2 PCBP2 0.32
[19,] ZNF593 ZNF593 0.4
[20,] HSU79274 HSU79274 0.32
[21,] PRIM1 PRIM1 0.3
[22,] PFDN5 PFDN5 0.33
[23,] OXA1L OXA1L 0.37
[24,] H3F3A H3F3A 0.42
[25,] ATIC ATIC 0.31
[26,] RPL13 RPL13 0.36
[27,] CIAPIN1 CIAPIN1 0.34
[28,] FBL FBL 0.33
[29,] RPS2 RPS2 RPS2 0.32
[30,] PCCB PCCB 0.36
[31,] RBMX RBMX 0.33
[32,] SHMT2 SHMT2 0.34
[33,] RPLP0 RPLP0 0.35
[34,] HNRPA1 HNRPA1 HNRPA1 0.35
[35,] STOML2 STOML2 0.32
[36,] RPS9 RPS9 0.36
[37,] SKB1 SKB1 0.33
[38,] GLTSCR2 GLTSCR2 0.37
[39,] CCNB1IP1 CCNB1IP1 0.3
[40,] MRPS2 MRPS2 0.33
[41,] FLJ20859 FLJ20859 0.34
[42,] FLJ12270 FLJ12270 0.3
TABLE 16
Bleomycin biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] MSN MSN 0.3
 [2,] PFN1 PFN1 0.45
 [3,] HK1 HK1 0.33
 [4,] ACTR2 ACTR2 0.31
 [5,] MCL1 MCL1 0.31
 [6,] ZYX ZYX 0.32
 [7,] RAP1B RAP1B 0.34
 [8,] GNB2 GNB2 0.32
 [9,] EPAS1 EPAS1 0.31
[10,] PGAM1 PGAM1 0.42
[11,] CKAP4 CKAP4 0.31
[12,] DUSP1 DUSP1 0.4
[13,] MYL9 MYL9 0.4
[14,] K-ALPHA-1 K-ALPHA-1 0.37
[15,] LGALS1 LGALS1 0.38
[16,] CSDA CSDA CSDA 0.3
[17,] AKR1B1 AKR1B1 0.32
[18,] IFITM2 IFITM2 IFITM2 0.36
[19,] ITGA5 ITGA5 0.43
[20,] VIM VIM 0.39
[21,] DPYSL3 DPYSL3 0.44
[22,] JUNB JUNB 0.32
[23,] ITGA3 ITGA3 0.38
[24,] NFKBIA NFKBIA 0.32
[25,] LAMB1 LAMB1 0.37
[26,] FHL1 FHL1 0.31
[27,] INSIG1 INSIG1 0.31
[28,] TIMP1 TIMP1 0.48
[29,] GJA1 GJA1 0.54
[30,] PSME2 PSME2 0.34
[31,] PRG1 PRG1 0.46
[32,] EXT1 EXT1 0.35
[33,] DKFZP434J154 DKFZP434J154 0.31
[34,] OPTN OPTN 0.31
[35,] M6PRBP1 M6PRBP1 0.52
[36,] MVP MVP 0.34
[37,] VASP VASP 0.31
[38,] ARL7 ARL7 0.39
[39,] NNMT NNMT NNMT 0.34
[40,] TAP1 TAP1 0.3
[41,] COL1A1 COL1A1 COL1A1 0.33
[42,] BASP1 BASP1 0.35
[43,] PLOD2 PLOD2 0.37
[44,] ATF3 ATF3 0.42
[45,] PALM2-AKAP2 PALM2-AKAP2 0.33
[46,] IL8 IL8 0.34
[47,] ANPEP ANPEP 0.35
[48,] LOXL2 LOXL2 0.32
[49,] TGFB1 TGFB1 0.31
[50,] IL4R IL4R 0.31
[51,] DGKA DGKA 0.32
[52,] STC2 STC2 0.31
[53,] SEC61G SEC61G 0.41
[54,] NFIL3 NFIL3 NFIL3 0.47
[55,] RGS3 RGS3 0.37
[56,] NK4 NK4 0.34
[57,] F2R F2R 0.34
[58,] TPM2 TPM2 0.35
[59,] PSMB9 PSMB9 PSMB9 0.34
[60,] LOX LOX 0.37
[61,] STC1 STC1 0.35
[62,] CSPG2 CSPG2 CSPG2 0.35
[63,] PTGER4 PTGER4 0.31
[64,] IL6 IL6 0.34
[65,] SMAD3 SMAD3 0.38
[66,] PLAU PLAU PLAU 0.35
[67,] WNT5A WNT5A 0.44
[68,] BDNF BDNF 0.34
[69,] TNFRSF1A TNFRSF1A TNFRSF1A 0.46
[70,] FLNC FLNC 0.34
[71,] DKFZP564K0822 DKFZP564K0822 0.34
[72,] FLOT1 FLOT1 0.38
[73,] PTRF PTRF 0.39
[74,] HLA-B HLA-B 0.36
[75,] COL6A2 COL6A2 COL6A2 0.32
[76,] MGC4083 MGC4083 0.32
[77,] TNFRSF10B TNFRSF10B 0.34
[78,] PLAGL1 PLAGL1 0.31
[79,] PNMA2 PNMA2 0.38
[80,] TFPI TFPI 0.38
[81,] LAT LAT 0.46
[82,] GZMB GZMB 0.51
[83,] CYR61 CYR61 0.37
[84,] PLAUR PLAUR PLAUR 0.35
[85,] FSCN1 FSCN1 FSCN1 0.32
[86,] ERP70 ERP70 0.32
[87,] AF1Q AF1Q 0.3
[88,] UBC UBC 0.37
[89,] FGFR1 FGFR1 0.33
[90,] HIC HIC 0.33
[91,] BAX BAX 0.35
[92,] COL4A2 COL4A2 COL4A2 0.32
[93,] COL6A1 COL6A1 0.32
[94,] IFITM3 IFITM3 0.3
[95,] MAP1B MAP1B 0.38
[96,] FLJ46603 FLJ46603 0.37
[97,] RAFTLIN RAFTLIN 0.34
[98,] RRAS RRAS 0.31
[99,] FTL FTL 0.3
[100,]  KIAA0877 KIAA0877 0.31
[101,]  MT1E MT1E MT1E 0.31
[102,]  CDC10 CDC10 0.51
[103,]  DOCK2 DOCK2 0.32
[104,]  TRIM22 TRIM22 0.36
[105,]  RIS1 RIS1 0.37
[106,]  BCAT1 BCAT1 0.42
[107,]  PRF1 PRF1 0.34
[108,]  DBN1 DBN1 0.36
[109,]  MT1K MT1K 0.3
[110,]  TMSB10 TMSB10 0.42
[111,]  RAB31 RAB31 0.45
[112,]  FLJ10350 FLJ10350 0.4
[113,]  C1orf24 C1orf24 0.34
[114,]  NME7 NME7 0.46
[115,]  TMEM22 TMEM22 0.3
[116,]  TPK1 TPK1 0.37
[117,]  COL5A2 COL5A2 0.34
[118,]  ELK3 ELK3 0.38
[119,]  CYLD CYLD 0.4
[120,]  ADAMTS1 ADAMTS1 0.31
[121,]  EHD2 EHD2 0.41
[122,]  ACTB ACTB ACTB 0.33
TABLE 17
Methyl-GAG (Methyl glyoxal bis(amidinohydrazone)
dihydrochloride)
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] PTMA PTMA 0.32
 [2,] SSRP1 SSRP1 0.37
 [3,] NUDC NUDC 0.35
 [4,] CTSC CTSC 0.35
 [5,] AP1G2 AP1G2 0.33
 [6,] PSME2 PSME2 0.3
 [7,] LBR LBR 0.38
 [8,] EFNB2 EFNB2 0.31
 [9,] SERPINA1 SERPINA1 0.34
[10,] SSSCA1 SSSCA1 0.32
[11,] EZH2 EZH2 0.36
[12,] MYB MYB MYB 0.33
[13,] PRIM1 PRIM1 0.39
[14,] H2AFX H2AFX 0.33
[15,] HMGA1 HMGA1 0.35
[16,] HMMR HMMR 0.33
[17,] TK2 TK2 0.42
[18,] WHSC1 WHSC1 0.35
[19,] DIAPH1 DIAPH1 0.34
[20,] LAMB3 LAMB3 0.31
[21,] DPAGT1 DPAGT1 0.42
[22,] UCK2 UCK2 0.31
[23,] SERPINB1 SERPINB1 0.31
[24,] MDN1 MDN1 0.35
[25,] BRRN1 BRRN1 0.33
[26,] G0S2 G0S2 0.43
[27,] RAC2 RAC2 0.35
[28,] MGC21654 MGC21654 0.36
[29,] GTSE1 GTSE1 0.35
[30,] TACC3 TACC3 0.31
[31,] PLEK2 PLEK2 0.32
[32,] PLAC8 PLAC8 0.31
[33,] HNRPD HNRPD 0.35
[34,] PNAS-4 PNAS-4 0.3
TABLE 18
Carboplatin biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] MSN MSN 0.31
 [2,] ITGA5 ITGA5 0.43
 [3,] VIM VIM 0.34
 [4,] TNFAIP3 TNFAIP3 0.4
 [5,] CSPG2 CSPG2 0.35
 [6,] WNT5A WNT5A 0.34
 [7,] FOXF2 FOXF2 0.36
 [8,] LOC94105 LOC94105 0.32
 [9,] IFI16 IFI16 0.38
[10,] LRRN3 LRRN3 0.33
[11,] FGFR1 FGFR1 0.37
[12,] DOCK10 DOCK10 0.4
[13,] LEPRE1 LEPRE1 0.32
[14,] COL5A2 COL5A2 0.3
[15,] ADAMTS1 ADAMTS1 0.34
TABLE 19
5-FU (5-Fluorouracil) biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] RPL18 RPL18 0.39
 [2,] RPL10A RPL10A 0.36
 [3,] RNPS1 RNPS1 0.3
 [4,] ANAPC5 ANAPC5 0.5
 [5,] EEF1B2 EEF1B2 0.4
 [6,] RPL13A RPL13A 0.38
 [7,] RPS15 RPS15 0.34
 [8,] AKAP1 AKAP1 0.37
 [9,] NDUFAB1 NDUFAB1 0.3
[10,] APRT APRT 0.32
[11,] ZNF593 ZNF593 0.37
[12,] MRP63 MRP63 0.31
[13,] IL6R IL6R 0.31
[14,] RPL13 RPL13 0.31
[15,] SART3 SART3 0.35
[16,] RPS6 RPS6 0.49
[17,] UCK2 UCK2 0.38
[18,] RPL3 RPL3 0.32
[19,] RPL17 RPL17 0.34
[20,] RPS2 RPS2 0.32
[21,] PCCB PCCB 0.31
[22,] TOMM20 TOMM20 0.39
[23,] SHMT2 SHMT2 0.36
[24,] RPLP0 RPLP0 0.3
[25,] GTF3A GTF3A 0.5
[26,] STOML2 STOML2 0.4
[27,] DKFZp564J157 DKFZp564J157 0.38
[28,] MRPS2 MRPS2 0.34
[29,] ALG5 ALG5 0.37
[30,] CALML4 CALML4 0.3
TABLE 20
Rituximab (e.g., Mabthera) biomarkers
List_2006 List_Prior List_Preferr Correlation
 [1,] ITK ITK 0.36
 [2,] KIFC1 KIFC1 0.36
 [3,] VLDLR VLDLR 0.39
 [4,] RUNX1 RUNX1 0.32
 [5,] PAFAH1B3 PAFAH1B3 0.32
 [6,] H1FX H1FX 0.43
 [7,] RNF144 RNF144 0.38
 [8,] TMSNB TMSNB 0.47
 [9,] CRY1 CRY1 0.37
[10,] MAZ MAZ 0.33
[11,] SLA SLA 0.35
[12,] SRF SRF 0.37
[13,] UMPS UMPS 0.41
[14,] CD3Z CD3Z 0.33
[15,] PRKCQ PRKCQ 0.31
[16,] HNRPM HNRPM 0.45
[17,] ZAP70 ZAP70 0.38
[18,] ADD1 ADD1 0.31
[19,] RFC5 RFC5 0.35
[20,] TM4SF2 TM4SF2 0.33
[21,] PFN2 PFN2 0.3
[22,] BMI1 BMI1 0.31
[23,] TUBGCP3 TUBGCP3 0.33
[24,] ATP6V1B2 ATP6V1B2 0.42
[25,] RALY RALY 0.31
[26,] PSMC5 PSMC5 0.36
[27,] CD1D CD1D 0.32
[28,] ADA ADA 0.34
[29,] CD99 CD99 0.33
[30,] CD2 CD2 0.43
[31,] CNP CNP 0.48
[32,] ERG ERG 0.47
[33,] MYL6 MYL6 0.41
[34,] CD3E CD3E 0.36
[35,] CD1A CD1A 0.46
[36,] CD1B CD1B 0.47
[37,] STMN1 STMN1 0.32
[38,] PSMC3 PSMC3 0.38
[39,] RPS4Y1 RPS4Y1 0.36
[40,] AKT1 AKT1 0.38
[41,] TAL1 TAL1 0.37
[42,] GNA15 GNA15 0.37
[43,] UBE2A UBE2A 0.35
[44,] TCF12 TCF12 0.35
[45,] UBE2S UBE2S 0.52
[46,] CCND3 CCND3 0.38
[47,] PAX6 PAX6 0.35
[48,] MDK MDK 0.3
[49,] CAPG CAPG 0.36
[50,] RAG2 RAG2 0.39
[51,] ACTN1 ACTN1 0.37
[52,] GSTM2 GSTM2 0.47
[53,] SATB1 SATB1 0.36
[54,] NASP NASP 0.3
[55,] IGFBP2 IGFBP2 0.46
[56,] CDH2 CDH2 0.49
[57,] CRABP1 CRABP1 0.36
[58,] DBN1 DBN1 0.49
[59,] CTNNA1 CTNNA1 0.53
[60,] AKR1C1 AKR1C1 0.32
[61,] CACNB3 CACNB3 0.37
[62,] FARSLA FARSLA 0.35
[63,] CASP2 CASP2 0.42
[64,] CASP2 CASP2 0.31
[65,] E2F4 E2F4 0.36
[66,] LCP2 LCP2 0.35
[67,] CASP6 CASP6 0.32
[68,] MYB MYB 0.3
[69,] SFRS6 SFRS6 0.44
[70,] GLRB GLRB 0.34
[71,] NDN NDN 0.39
[72,] CPSF1 CPSF1 0.33
[73,] GNAQ GNAQ 0.44
[74,] TUSC3 TUSC3 0.41
[75,] GNAQ GNAQ 0.54
[76,] JARID2 JARID2 0.44
[77,] OCRL OCRL 0.5
[78,] FHL1 FHL1 0.36
[79,] EZH2 EZH2 0.4
[80,] SMOX SMOX 0.35
[81,] SLC4A2 SLC4A2 0.35
[82,] UFD1L UFD1L 0.3
[83,] SEPW1 SEPW1 0.31
[84,] ZNF32 ZNF32 0.35
[85,] HTATSF1 HTATSF1 0.35
[86,] SHD1 SHD1 0.43
[87,] PTOV1 PTOV1 0.42
[88,] NXF1 NXF1 0.46
[89,] FYB FYB 0.47
[90,] TRIM28 TRIM28 0.38
[91,] BC008967 BC008967 0.4
[92,] TRB@ TRB@ 0.3
[93,] TFRC TFRC 0.31
[94,] H1F0 H1F0 0.36
[95,] CD3D CD3D 0.32
[96,] CD3G CD3G 0.4
[97,] CENPB CENPB 0.36
[98,] ALDH2 ALDH2 0.33
[99,] ANXA1 ANXA1 0.35
[100,]  H2AFX H2AFX 0.51
[101,]  CD1E CD1E 0.33
[102,]  DDX5 DDX5 0.39
[103,]  ABL1 ABL1 0.3
[104,]  CCNA2 CCNA2 0.3
[105,]  ENO2 ENO2 0.35
[106,]  SNRPB SNRPB 0.38
[107,]  GATA3 GATA3 0.36
[108,]  RRM2 RRM2 0.48
[109,]  GLUL GLUL 0.4
[110,]  TCF7 TCF7 0.39
[111,]  FGFR1 FGFR1 0.33
[112,]  SOX4 SOX4 0.3
[113,]  MAL MAL 0.3
[114,]  NUCB2 NUCB2 0.38
[115,]  SMA3 SMA3 0.31
[116,]  FAT FAT 0.52
[117,]  UNG UNG 0.31
[118,]  ARHGDIB ARHGDIB 0.36
[119,]  RUNX1 RUNX1 0.38
[120,]  MPHOSPH6 MPHOSPH6 0.5
[121,]  DCTN1 DCTN1 0.34
[122,]  SH3GL3 SH3GL3 0.38
[123,]  VIM VIM 0.41
[124,]  PLEKHC1 PLEKHC1 0.3
[125,]  CD47 CD47 0.32
[126,]  POLR2F POLR2F 0.37
[127,]  RHOH RHOH 0.43
[128,]  ADD1 ADD1 0.46
[129,]  ATP2A3 ATP2A3 0.38
TABLE 21
Radiation sensitivity biomarkers
List_2006 HU6800 List_Prior List_Preferr Correlation
 [1,] TRA1 TRA1 0.36
 [2,] ACTN4 ACTN4 0.36
 [3,] WARS WARS 0.39
 [4,] CALM1 CALM1 0.32
 [5,] CD63 CD63 CD63 0.32
 [6,] CD81 CD81 0.43
 [7,] FKBP1A FKBP1A 0.38
 [8,] CALU CALU 0.47
 [9,] IQGAP1 IQGAP1 0.37
[10,] CTSB CTSB 0.33
[11,] MGC8721 MGC8721 0.35
[12,] STAT1 STAT1 0.37
[13,] TACC1 TACC1 0.41
[14,] TM4SF8 TM4SF8 0.33
[15,] CD59 CD59 0.31
[16,] CKAP4 CKAP4 CKAP4 0.45
[17,] DUSP1 DUSP1 DUSP1 0.38
[18,] RCN1 RCN1 0.31
[19,] MGC8902 MGC8902 0.35
[20,] LGALS1 LGALS1 LGALS1 0.33
[21,] BHLHB2 BHLHB2 0.3
[22,] RRBP1 RRBP1 0.31
[23,] PKM2 PKM2 0.33
[24,] PRNP PRNP 0.42
[25,] PPP2CB PPP2CB 0.31
[26,] CNN3 CNN3 0.36
[27,] ANXA2 ANXA2 ANXA2 0.32
[28,] IER3 IER3 0.34
[29,] JAK1 JAK1 0.33
[30,] MARCKS MARCKS 0.43
[31,] LUM LUM 0.48
[32,] FER1L3 FER1L3 0.47
[33,] SLC20A1 SLC20A1 0.41
[34,] EIF4G3 EIF4G3 0.36
[35,] HEXB HEXB 0.46
[36,] EXT1 EXT1 0.47
[37,] TJP1 TJP1 0.32
[38,] CTSL CTSL CTSL 0.38
[39,] SLC39A6 SLC39A6 0.36
[40,] RIOK3 RIOK3 0.38
[41,] CRK CRK 0.37
[42,] NNMT NNMT 0.37
[43,] COL1A1 COL1A1 0.35
[44,] TRAM2 TRAM2 TRAM2 0.35
[45,] ADAM9 ADAM9 0.52
[46,] DNAJC7 DNAJC7 0.38
[47,] PLSCR1 PLSCR1 0.35
[48,] PRSS23 PRSS23 0.3
[49,] PLOD2 PLOD2 0.36
[50,] NPC1 NPC1 0.39
[51,] TOB1 TOB1 0.37
[52,] GFPT1 GFPT1 0.47
[53,] IL8 IL8 0.36
[54,] DYRK2 DYRK2 0.3
[55,] PYGL PYGL 0.46
[56,] LOXL2 LOXL2 0.49
[57,] KIAA0355 KIAA0355 0.36
[58,] UGDH UGDH 0.49
[59,] NFIL3 NFIL3 0.53
[60,] PURA PURA 0.32
[61,] ULK2 ULK2 0.37
[62,] CENTG2 CENTG2 0.35
[63,] NID2 NID2 0.42
[64,] CAP350 CAP350 0.31
[65,] CXCL1 CXCL1 0.36
[66,] BTN3A3 BTN3A3 0.35
[67,] IL6 IL6 0.32
[68,] WNT5A WNT5A 0.3
[69,] FOXF2 FOXF2 0.44
[70,] LPHN2 LPHN2 0.34
[71,] CDH11 CDH11 0.39
[72,] P4HA1 P4HA1 0.33
[73,] GRP58 GRP58 0.44
[74,] ACTN1 ACTN1 ACTN1 0.41
[75,] CAPN2 CAPN2 0.54
[76,] DSIPI DSIPI 0.44
[77,] MAP1LC3B MAP1LC3B 0.5
[78,] GALIG GALIG GALIG 0.36
[79,] IGSF4 IGSF4 0.4
[80,] IRS2 IRS2 0.35
[81,] ATP2A2 ATP2A2 0.35
[82,] OGT OGT 0.3
[83,] TNFRSF10B TNFRSF10B 0.31
[84,] KIAA1128 KIAA1128 0.35
[85,] TM4SF1 TM4SF1 0.35
[86,] RBPMS RBPMS 0.43
[87,] RIPK2 RIPK2 0.42
[88,] CBLB CBLB 0.46
[89,] NR1D2 NR1D2 0.47
[90,] BTN3A2 BTN3A2 0.38
[91,] SLC7A11 SLC7A11 0.4
[92,] MPZL1 MPZL1 0.3
[93,] IGFBP3 IGFBP3 IGFBP3 0.31
[94,] SSA2 SSA2 0.36
[95,] FN1 FN1 FN1 0.32
[96,] NQO1 NQO1 0.4
[97,] ASPH ASPH 0.36
[98,] ASAH1 ASAH1 0.33
[99,] MGLL MGLL 0.35
[100,]  SERPINB6 SERPINB6 0.51
[101,]  HSPA5 HSPA5 0.33
[102,]  ZFP36L1 ZFP36L1 0.39
[103,]  COL4A2 COL4A2 0.3
[104,]  COL4A1 COL4A1 0.3
[105,]  CD44 CD44 0.35
[106,]  SLC39A14 SLC39A14 0.38
[107,]  NIPA2 NIPA2 0.36
[108,]  FKBP9 FKBP9 0.48
[109,]  IL6ST IL6ST 0.4
[110,]  DKFZP564G2022 DKFZP564G2022 0.39
[111,]  PPAP2B PPAP2B 0.33
[112,]  MAP1B MAP1B 0.3
[113,]  MAPK1 MAPK1 0.3
[114,]  MYO1B MYO1B 0.38
[115,]  CAST CAST CAST 0.31
[116,]  RRAS2 RRAS2 0.52
[117,]  QKI QKI 0.31
[118,]  LHFPL2 LHFPL2 0.36
[119,]  SEPT10 SEPT10 0.38
[120,]  ARHE ARHE 0.5
[121,]  KIAA1078 KIAA1078 0.34
[122,]  FTL FTL 0.38
[123,]  KIAA0877 KIAA0877 0.41
[124,]  PLCB1 PLCB1 0.3
[125,]  KIAA0802 KIAA0802 0.32
[126,]  KPNB1 KPNB1 0.37
[127,]  RAB3GAP RAB3GAP 0.43
[128,]  SERPINB1 SERPINB1 0.46
[129,]  TIMM17A TIMM17A 0.38
[130,]  SOD2 SOD2 0.35
[131,]  HLA-A HLA-A HLA-A 0.33
[132,]  NOMO2 NOMO2 0.43
[133,]  LOC55831 LOC55831 0.32
[134,]  PHLDA1 PHLDA1 0.32
[135,]  TMEM2 TMEM2 0.47
[136,]  MLPH MLPH 0.35
[137,]  FAD104 FAD104 0.34
[138,]  LRRC5 LRRC5 0.42
[139,]  RAB7L1 RAB7L1 0.41
[140,]  FLJ35036 FLJ35036 0.36
[141,]  DOCK10 DOCK10 0.41
[142,]  LRP12 LRP12 0.36
[143,]  TXNDC5 TXNDC5 0.4
[144,]  CDC14B CDC14B 0.39
[145,]  HRMT1L1 HRMT1L1 0.38
[146,]  CORO1C CORO1C 0.38
[147,]  DNAJC10 DNAJC10 0.31
[148,]  TNPO1 TNPO1 0.33
[149,]  LONP LONP 0.32
[150,]  AMIGO2 AMIGO2 0.38
[151,]  DNAPTP6 DNAPTP6 0.31
[152,]  ADAMTS1 ADAMTS1 0.37
[153,]  CCL21
[154,]  SCARB2
[155,]  MAD2L1BP
[156,]  PTS
[157,]  NBL1
[158,]  CD151
[159,]  CRIP2
[160,]  UGCG
[161,]  PRSS11
[162,]  MME
[163,]  CBR1
[164,]  DUSP3
[165,]  PFN2
[166,]  MICA
[167,]  FTH1
[168,]  RHOC
[169,]  ZAP128
[170,]  PON2
[171,]  COL5A2
[172,]  CST3
[173,]  MCAM
[174,]  MMP2
[175,]  CTSD
[176,]  ALDH3A1
[177,]  CSRP1
[178,]  S100A4
[179,]  CALD1
[180,]  CTGF
[181,]  CAPG
[182,]  TAGLN
[183,]  FSTL1
[184,]  SCTR
[185,]  BLVRA
[186,]  COPEB
[187,]  DIPA
[188,]  SMARCD3
[189,]  MVP
[190,]  PEA15
[191,]  S100A13
[192,]  ECE1
TABLE 22
Vincristine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
 1 SLC25A5 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
 2 RPL10 0.38 GCCCCACTGGACAACACTGATTCCT
 3 RPL12 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
 4 RPS4X 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
 5 EIF5A 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
 6 BLMH 0.32 AAGCCTATACGTTTCTGTGGAGTAA
 7 TBCA 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
 1 MDH2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
 9 S100A4 0.32 TGGACCCCACTGGCTGAGAATCTGG
10 C14orf139 0.3 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 23
Cisplatin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
11 C1QR1 0.3 CACCCAGCTGGTCCTGTGGATGGGA
3 SLA 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
7 PTPN7 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
11 ZNFN1A1 0.33 CACCCAGCTGGTCCTGTGGATGGGA
10 CENTB1 0.37 TTGGACATCTCTAGTGTAGCTGCCA
16 IFI16 0.31 TCCTCCATCACCTGAAACACTGGAC
3 ARHGEF6 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
6 SEC31L2 0.32 AAGCCTATACGTTTCTGTGGAGTAA
10 CD3Z 0.32 TTGGACATCTCTAGTGTAGCTGCCA
16 GZMB 0.3 TCCTCCATCACCTGAAACACTGGAC
16 CD3D 0.34 TCCTCCATCACCTGAAACACTGGAC
11 MAP4K1 0.32 CACCCAGCTGGTCCTGTGGATGGGA
11 GPR65 0.39 CACCCAGCTGGTCCTGTGGATGGGA
24 PRF1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
11 ARHGAP15 0.35 CACCCAGCTGGTCCTGTGGATGGGA
3 TM6SF1 0.41 TGCCTGCTCCTGTACTTGTCCTCAG
4 TCF4 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
TABLE 24
Etoposide biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 CD99 0.3 AAGCCTATACGTTTCTGTGGAGTAA
24 INSIG1 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
2 PRG1 0.34 GCCCCACTGGACAACACTGATTCCT
6 MUF1 0.35 AAGCCTATACGTTTCTGTGGAGTAA
11 SLA 0.37 CACCCAGCTGGTCCTGTGGATGGGA
9 SSBP2 0.37 TGGACCCCACTGGCTGAGAATCTGG
24 GNB5 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
2 MFNG 0.33 GCCCCACTGGACAACACTGATTCCT
6 PSMB9 0.31 AAGCCTATACGTTTCTGTGGAGTAA
16 EVI2A 0.41 TCCTCCATCACCTGAAACACTGGAC
6 PTPN7 0.3 AAGCCTATACGTTTCTGTGGAGTAA
3 PTGER4 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
2 CXorf9 0.3 GCCCCACTGGACAACACTGATTCCT
7 ZNFN1A1 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
9 CENTB1 0.3 TGGACCCCACTGGCTGAGAATCTGG
16 NAP1L1 0.31 TCCTCCATCACCTGAAACACTGGAC
3 HLA-DRA 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
11 IFI16 0.38 CACCCAGCTGGTCCTGTGGATGGGA
9 ARHGEF6 0.33 TGGACCCCACTGGCTGAGAATCTGG
6 PSCDBP 0.4 AAGCCTATACGTTTCTGTGGAGTAA
10 SELPLG 0.35 TTGGACATCTCTAGTGTAGCTGCCA
4 SEC31L2 0.42 AAATGTTTCCTTGTGCCTGCTCCTG
3 CD3Z 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
11 SH2D1A 0.33 CACCCAGCTGGTCCTGTGGATGGGA
9 GZMB 0.34 TGGACCCCACTGGCTGAGAATCTGG
2 SCN3A 0.3 GCCCCACTGGACAACACTGATTCCT
16 RAFTLIN 0.39 TCCTCCATCACCTGAAACACTGGAC
3 DOCK2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD3D 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 ZAP70 0.35 TCCTCCATCACCTGAAACACTGGAC
9 GPR65 0.35 TGGACCCCACTGGCTGAGAATCTGG
9 PRF1 0.32 TGGACCCCACTGGCTGAGAATCTGG
7 ARHGAP15 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 NOTCH1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 UBASH3A 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 25
Azaguanine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 SRM 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 SCARB1 0.4 TTGGACATCTCTAGTGTAGCTGCCA
4 SIAT1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
9 CUGBP2 0.37 TGGACCCCACTGGCTGAGAATCTGG
1 WASPIP 0.44 TCCTGTACTTGTCCTCAGCTTGGGC
6 ITM2A 0.31 AAGCCTATACGTTTCTGTGGAGTAA
7 PALM2-AKAP2 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 LNK 0.43 TTGGACATCTCTAGTGTAGCTGCCA
3 FCGR2A 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
1 RUNX3 0.43 TCCTGTACTTGTCCTCAGCTTGGGC
4 EVI2A 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
7 BTN3A3 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
24 LCP2 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
16 BCHE 0.35 TCCTCCATCACCTGAAACACTGGAC
3 LY96 0.47 TGCCTGCTCCTGTACTTGTCCTCAG
7 LCP1 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
11 IFI16 0.33 CACCCAGCTGGTCCTGTGGATGGGA
10 MCAM 0.37 TTGGACATCTCTAGTGTAGCTGCCA
11 MEF2C 0.41 CACCCAGCTGGTCCTGTGGATGGGA
1 FYN 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
6 C1orf38 0.37 AAGCCTATACGTTTCTGTGGAGTAA
3 FCGR2C 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
6 TNIK 0.35 AAGCCTATACGTTTCTGTGGAGTAA
1 AMPD2 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
4 SEPT6 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
24 RAFTLIN 0.39 TCCTTGTGCCTGCTCCTGTACTTGT
11 SLC43A3 0.52 CACCCAGCTGGTCCTGTGGATGGGA
6 LPXN 0.54 AAGCCTATACGTTTCTGTGGAGTAA
1 CKIP-1 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
24 FLJ10539 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
6 FLJ35036 0.36 AAGCCTATACGTTTCTGTGGAGTAA
2 DOCK10 0.3 GCCCCACTGGACAACACTGATTCCT
7 TRPV2 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 IFRG28 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
7 LEF1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
9 ADAMTS1 0.36 TGGACCCCACTGGCTGAGAATCTGG
TABLE 26
Carboplatin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
 4 ITGA5 0.43 AAATGTTTCCTTGTGCCTGCTCCTG
3 TNFAIP3 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
16 WNT5A 0.34 TCCTCCATCACCTGAAACACTGGAC
3 FOXF2 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
4 LOC94105 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
16 IFI16 0.38 TCCTCCATCACCTGAAACACTGGAC
10 LRRN3 0.33 TTGGACATCTCTAGTGTAGCTGCCA
1 DOCK10 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
2 LEPRE1 0.32 GCCCCACTGGACAACACTCATTCCT
9 ADAMTS1 0.34 TGGACCCCACTGGCTGAGAATCTGG
TABLE 27
Adriamycin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 CD99 0.41 AAGCCTATACGTTTCTGTGGAGTAA
24 ALDOC 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
3 SLA 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
16 SSBP2 0.34 TCCTCCATCACCTGAAACACTGGAC
24 IL2RG 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
9 CXorf9 0.32 TGGACCCCACTGGCTGAGAATCTGG
7 RHOH 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 ZNFN1A1 0.43 TTGGACATCTCTAGTGTAGCTGCCA
6 CENTB1 0.36 AAGCCTATACGTTTCTGTGGAGTAA
16 MAP4K1 0.35 TCCTCCATCACCTGAAACACTGGAC
4 CD3G 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
11 CCR9 0.34 CACCCAGCTGGTCCTGTGGATGGGA
24 CXCR4 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
16 ARHGEF6 0.31 TCCTCCATCACCTGAAACACTGGAC
9 SELPLG 0.31 TGGACCCCACTGGCTGAGAATCTGG
3 SEC31L2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD3Z 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
10 SH2D1A 0.37 TTGGACATCTCTAGTGTAGCTGCCA
6 CD1A 0.4 AAGCCTATACGTTTCTGTGGAGTAA
6 LAIR1 0.39 AAGCCTATACGTTTCTGTGGAGTAA
16 TRB@ 0.34 TCCTCCATCACCTGAAACACTGGAC
24 CD3D 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
7 WBSCR20C 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
1 ZAP70 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
3 IFI44 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
6 GPR65 0.31 AAGCCTATACGTTTCTGTGGAGTAA
11 AIF1 0.3 CACCCAGCTGGTCCTGTGGATGGGA
1 ARHGAP15 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
16 NARF 0.3 TCCTCCATCACCTGAAACACTGGAC
11 PACAP 0.32 CACCCAGCTGGTCCTGTGGATGGGA
TABLE 28
Aclarubicin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
4 RPL12 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
10 RPLP2 0.37 TTGGACATCTCTAGTGTAGCTGCCA
24 MYB 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
4 ZNFN1A1 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
3 SCAP1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
4 STAT4 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
6 SP140 0.4 AAGCCTATACGTTTCTGTGGAGTAA
3 AMPD3 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
6 TNFAIP8 0.4 AAGCCTATACGTTTCTGTGGAGTAA
24 DDX18 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
24 TAF5 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
11 RPS2 0.34 CACCCAGCTGGTCCTGTGGATGGGA
6 DOCK2 0.32 AAGCCTATACGTTTCTGTGGAGTAA
6 GPR65 0.35 AAGCCTATACGTTTCTGTGGAGTAA
24 HOXA9 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
4 FLJ12270 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
7 HNRPD 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 29
Mitoxantrone biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 PGAM1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
4 DPYSL3 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
24 INSIG1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
10 GJA1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
10 BNIP3 0.31 TTGGACATCTCTAGTGTAGCTGCCA
2 PRG1 0.39 GCCCCACTGGACAACACTGATTCCT
3 G6PD 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
2 PLOD2 0.34 GCCCCACTGGACAACACTGATTCCT
24 LOXL2 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
16 SSBP2 0.36 TCCTCCATCACCTGAAACACTGGAC
24 C1orf29 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
24 TOX 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
1 STC1 0.39 TCCTGTACTTGTCCTCAGCTTGGGC
4 TNFRSF1A 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
16 NCOR2 0.3 TCCTCCATCACCTGAAACACTGGAC
24 NAP1L1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
6 LOC94105 0.34 AAGCCTATACGTTTCTGTGGAGTAA
16 ARHGEF6 0.34 TCCTCCATCACCTGAAACACTGGAC
24 GATA3 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
1 TFPI 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
6 CD3Z 0.37 AAGCCTATACGTTTCTGTGGAGTAA
2 AF1Q 0.33 GCCCCACTGGACAACACTGATTCCT
3 MAP1B 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
24 CD3D 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
1 BCAT1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
9 IFI44 0.33 TGGACCCCACTGGCTGAGAATCTGG
4 CUTC 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
6 NAP1L2 0.33 AAGCCTATACGTTTCTGTGGAGTAA
4 NME7 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
1 FLJ21159 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 30
Mitomycin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 STC1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
2 GPR65 0.32 GCCCCACTGGACAACACTGATTCCT
7 DOCK10 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
24 FAM46A 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
7 LOC54103 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 31
Paclitaxel (Taxol) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 RPL10 0.31 TCCTCCATCACCTGAAACACTGGAC
16 RPS4X 0.31 TCCTCCATCACCTGAAACACTGGAC
24 DKC1 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
7 DKFZP564C186 0.32 ACTTGTCCTCAGCTTGGGGTTCTTC
3 PRP19 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
2 PAB9P40 0.33 GCCCCACTGGACAACACTGATTCCT
4 HSA9761 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
4 GMDS 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
4 CEP1 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
4 IL13RA2 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
7 MAGEB2 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
11 HMGN2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
16 ALMS1 0.3 TCCTCCATCACCTGAAACACTGGAC
3 GPR65 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
9 FLJ10774 0.31 TGGACCCCACTGGCTGAGAATCTGG
3 NOL8 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
3 DAZAP1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 SLC25A15 0.31 TTGGACATCTCTAGTGTAGCTGCCA
16 PAF53 0.36 TCCTCCATCACCTGAAACACTGGAC
16 PITPNC1 0.33 TCCTCCATCACCTGAAACACTGGAC
9 SPANXC 0.3 TGGACCCCACTGGCTGAGAATCTGG
11 KIAA1393 0.33 CACCCAGCTGGTCCTGTGGATGGGA
TABLE 32
Gemcitabine (Gemzar) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
11 UBE2L6 0.38 CACCCAGCTGGTCCTGTGGATGGGA
11 TAP1 0.33 CACCCAGCTGGTCCTGTGGATGGGA
1 F2R 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
3 PSMB9 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
6 IL7R 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 TNFAIP8 0.33 AAGCCTATACGTTTCTGTGGAGTAA
9 HLA-C 0.33 TGGACCCCACTGGCTGAGAATCTGG
9 IFI44 0.31 TGGACCCCACTGGCTGAGAATCTGG
TABLE 33
Taxotere (docetaxel) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 ANP32B 0.45 GCCCCACTGGACAACACTGATTCCT
10 GTF3A 0.31 TTGGACATCTCTAGTGTAGCTGCCA
7 TRIM14 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
2 SKP2 0.33 GCCCCACTGGACAACACTGATTCCT
1 TRIP13 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
2 RFC3 0.45 GCCCCACTGGACAACACTGATTCCT
3 CASP7 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
6 TXN 0.36 AAGCCTATACGTTTCTGTGGAGTAA
4 MCM5 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
4 PTGES2 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
9 OBFC1 0.37 TGGACCCCACTGGCTGAGAATCTGG
2 EPB41L4B 0.32 GCCCCACTGGACAACACTGATTCCT
16 CALML4 0.31 TCCTCCATCACCTGAAACACTGGAC
TABLE 34
Dexamethasone biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
234 IFITM2 0.38 ATATATGGACCTAGCTTGAGGCAAT
6 UBE2L6 0.32 AAGCCTATACGTTTCTGTGGAGTAA
11 ITM2A 0.38 CACCCAGCTGGTCCTGTGGATGGGA
16 IL2RG 0.36 TCCTCCATCACCTGAAACACTGGAC
1 GPRASP1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
24 PTPN7 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
2 CXorf9 0.36 GCCCCACTGGACAACACTGATTCCT
3 RHOH 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
7 GIT2 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ZNFN1A1 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
11 CEP1 0.31 CACCCAGCTGGTCCTGTGGATGGGA
6 MAP4K1 0.3 AAGCCTATACGTTTCTGTGGAGTAA
4 CCR7 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
11 CD3G 0.35 CACCCAGCTGGTCCTGTGGATGGGA
6 UCP2 0.3 AAGCCTATACGTTTCTGTGGAGTAA
9 GATA3 0.37 TGGACCCCACTGGCTGAGAATCTGG
1 CDKN2A 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
2 TARP 0.3 GCCCCACTGGACAACACTGATTCCT
10 LAIR1 0.34 TTGGACATCTCTAGTGTAGCTGCCA
24 SH2D1A 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
3 SEPT6 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
24 HA-1 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
16 CD3D 0.32 TCCTCCATCACCTGAAACACTGGAC
11 LST1 0.39 CACCCAGCTGGTCCTGTGGATGGGA
6 AIF1 0.35 AAGCCTATACGTTTCTGTGGAGTAA
3 ADA 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
11 DATF1 0.41 CACCCAGCTGGTCCTGTGGATGGGA
1 ARHGAP15 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
11 PLAC8 0.31 CACCCAGCTGGTCCTGTGGATGGGA
2 CECR1 0.31 GCCCCACTGGACAACACTGATTCCT
9 LOC81558 0.33 TGGACCCCACTGGCTGAGAATCTGG
7 EHD2 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 35
Ara-C (Cytarabine hydrochloride) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
9 ITM2A 0.32 TGGACCCCACTGGCTGAGAATCTGG
4 RHOH 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
16 PRIM1 0.3 TCCTCCATCACCTGAAACACTGGAC
24 CENTB1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
2 NAP1L1 0.31 GCCCCACTGGACAACACTGATTCCT
16 ATP5G2 0.31 TCCTCCATCACCTGAAACACTGGAC
4 GATA3 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
6 PRKCQ 0.32 AAGCCTATACGTTTCTGTGGAGTAA
2 SH2D1A 0.3 GCCCCACTGGACAACACTGATTCCT
7 SEPT6 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
7 NME4 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
6 CD3D 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 CD1E 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 ADA 0.34 GCCCCACTGGACAACACTGATTCCT
11 FHOD1 0.31 CACCCAGCTGGTCCTGTGGATGGGA
TABLE 36
Methylprednisolone biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 CD99 0.31 GCCCCACTGGACAACACTGATTCCT
3 ARHGDIB 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
2 ITM2A 0.35 GCCCCACTGGACAACACTGATTCCT
16 LGALS9 0.43 TCCTCCATCACCTGAAACACTGGAC
9 INPP5D 0.34 TGGACCCCACTGGCTGAGAATCTGG
24 SATB1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
4 TFDP2 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
9 SLA 0.31 TGGACCCCACTGGCTGAGAATCTGG
3 IL2RG 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
3 MFNG 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
4 SELL 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
16 CDW52 0.33 TCCTCCATCACCTGAAACACTGGAC
1 LRMP 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
11 ICAM2 0.38 CACCCAGCTGGTCCTGTGGATGGGA
3 RIMS3 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
9 PTPN7 0.39 TGGACCCCACTGGCTGAGAATCTGG
1 ARHGAP25 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
16 LCK 0.3 TCCTCCATCACCTGAAACACTGGAC
10 CXorf9 0.3 TTGGACATCTCTAGTGTAGCTGCCA
6 RHOH 0.51 AAGCCTATACGTTTCTGTGGAGTAA
7 GIT2 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ZNFN1A1 0.53 TCCTTGTGCCTGCTCCTGTACTTGT
16 CENTB1 0.36 TCCTCCATCACCTGAAACACTGGAC
1 LCP2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
1 SPI1 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
6 GZMA 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 CEP1 0.37 AAGCCTATACGTTTCTGTGGAGTAA
9 CD8A 0.38 TGGACCCCACTGGCTGAGAATCTGG
16 SCAP1 0.32 TCCTCCATCACCTGAAACACTGGAC
2 CD2 0.48 GCCCCACTGGACAACACTGATTCCT
7 VAV1 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
1 MAP4K1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
7 CCR7 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
24 C6orf32 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
3 ALOX15B 0.43 TGCCTGCTCCTGTACTTGTCCTCAG
6 BRDT 0.33 AAGCCTATACGTTTCTGTGGAGTAA
6 CD3G 0.51 AAGCCTATACGTTTCTGTGGAGTAA
7 LTB 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
10 NVL 0.31 TTGGACATCTCTAGTGTAGCTGCCA
3 RASGRP2 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
4 LCP1 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
6 CXCR4 0.3 AAGCCTATACGTTTCTGTGGAGTAA
11 PRKD2 0.33 CACCCAGCTGGTCCTGTGGATGGGA
1 GATA3 0.39 TCCTGTACTTGTCCTCAGCTTGGGC
2 KIAA0922 0.36 GCCCCACTGGACAACACTGATTCCT
16 TARP 0.49 TCCTCCATCACCTGAAACACTGGAC
7 SEC31L2 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
10 PRKCQ 0.37 TTGGACATCTCTAGTGTAGCTGCCA
6 SH2D1A 0.33 AAGCCTATACGTTTCTGTGGAGTAA
6 CHRNA3 0.5 AAGCCTATACGTTTCTGTGGAGTAA
6 CD1A 0.44 AAGCCTATACGTTTCTGTGGAGTAA
11 LST1 0.36 CACCCAGCTGGTCCTGTGGATGGGA
11 LAIR1 0.47 CACCCAGCTGGTCCTGTGGATGGGA
2 CACNA1G 0.33 GCCCCACTGGACAACACTGATTCCT
7 TRB@ 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 SEPT6 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
11 HA-1 0.42 CACCCAGCTGGTCCTGTGGATGGGA
1 DOCK2 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
1 CD3D 0.41 TCCTGTACTTGTCCTCAGCTTGGGC
3 TRD@ 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
3 T3JAM 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
1 FNBP1 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
11 CD6 0.4 CACCCAGCTGGTCCTGTGGATGGGA
3 AIF1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
1 FOLH1 0.45 TCCTGTACTTGTCCTCAGCTTGGGC
11 CD1E 0.58 CACCCAGCTGGTCCTGTGGATGGGA
24 LY9 0.39 TCCTTGTGCCTGCTCCTGTACTTGT
4 ADA 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
2 CDKL5 0.44 GCCCCACTGGACAACACTGATTCCT
6 TRIM 0.38 AAGCCTATACGTTTCTGTGGAGTAA
7 DATF1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 RGC32 0.51 TCCTTGTGCCTGCTCCTGTACTTGT
11 ARHGAP15 0.34 CACCCAGCTGGTCCTGTGGATGGGA
24 NOTCH1 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
4 BIN2 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
6 SEMA4G 0.35 AAGCCTATACGTTTCTGTGGAGTAA
11 DPEP2 0.33 CACCCAGCTGGTCCTGTGGATGGGA
1 CECR1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
3 BCL11B 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
10 STAG3 0.41 TTGGACATCTCTAGTGTAGCTGCCA
3 GALNT6 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
4 UBASH3A 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
16 PHEMX 0.38 TCCTCCATCACCTGAAACACTGGAC
24 FLJ13373 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
16 LEF1 0.49 TCCTCCATCACCTGAAACACTGGAC
10 IL21R 0.42 TTGGACATCTCTAGTGTAGCTGCCA
24 MGC17330 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
24 AKAP13 0.53 TCCTTGTGCCTGCTCCTGTACTTGT
4 GIMAP5 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
TABLE 37
Methotrexate biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 PRPF8 0.34 TCCTCCATCACCTGAAACACTGGAC
6 RPL18 0.34 AAGCCTATACGTTTCTGTGGAGTAA
11 GOT2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
1 RPL13A 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
11 RPS15 0.39 CACCCAGCTGGTCCTGTGGATGGGA
2 RPLP2 0.32 GCCCCACTGGACAACACTGATTCCT
2 CSDA 0.39 GCCCCACTGGACAACACTGATTCCT
16 KHDRBS1 0.32 TCCTCCATCACCTGAAACACTGGAC
1 SNRPA 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
4 IMPDH2 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
4 RPS19 0.47 AAATGTTTCCTTGTGCCTGCTCCTG
11 NUP88 0.36 CACCCAGCTGGTCCTGTGGATGGGA
3 ATP5D 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
4 PCBP2 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
4 ZNF593 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
9 HSU79274 0.32 TGGACCCCACTGGCTGAGAATCTGG
11 PRIM1 0.3 CACCCAGCTGGTCCTGTGGATGGGA
16 PFDN5 0.33 TCCTCCATCACCTGAAACACTGGAC
11 OXA1L 0.37 CACCCAGCTGGTCCTGTGGATGGGA
7 ATIC 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
7 CIAPIN1 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
11 RPS2 0.32 CACCCAGCTGGTCCTGTGGATGGGA
2 PCCB 0.36 GCCCCACTGGACAACACTGATTCCT
7 SHMT2 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
6 RPLP0 0.35 AAGCCTATACGTTTCTGTGGAGTAA
9 HNRPA1 0.35 TGGACCCCACTGGCTGAGAATCTGG
3 STOML2 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
7 SKB1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
6 GLTSCR2 0.37 AAGCCTATACGTTTCTGTGGAGTAA
24 CCNB1IP1 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 MRPS2 0.33 TTGGACATCTCTAGTGTAGCTGCCA
3 FLJ20859 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
7 FLJ12270 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 38
Bleomycin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 PFN1 0.45 GCCCCACTGGACAACACTGATTCCT
10 HK1 0.33 TTGGACATCTCTAGTGTAGCTGCCA
9 MCL1 0.31 TGGACCCCACTGGCTGAGAATCTGG
9 ZYX 0.32 TGGACCCCACTGGCTGAGAATCTGG
7 RAP1B 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
11 GNB2 0.32 CACCCAGCTGGTCCTGTGGATGGGA
7 EPAS1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
3 PGAM1 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
7 CKAP4 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
4 DUSP1 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
10 MYL9 0.4 TTGGACATCTCTAGTGTAGCTGCCA
10 K-ALPHA-1 0.37 TTGGACATCTCTAGTGTAGCTGCCA
24 CSDA 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 IFITM2 0.36 TTGGACATCTCTAGTGTAGCTGCCA
2 ITGA5 0.43 GCCCCACTGGACAACACTGATTCCT
9 DPYSL3 0.44 TGGACCCCACTGGCTGAGAATCTGG
1 JUNB 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
16 NFKBIA 0.32 TCCTCCATCACCTGAAACACTGGAC
4 LAMB1 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
9 FHL1 0.31 TGGACCCCACTGGCTGAGAATCTGG
9 INSIG1 0.31 TGGACCCCACTGGCTGAGAATCTGG
9 TIMP1 0.48 TGGACCCCACTGGCTGAGAATCTGG
6 GJA1 0.54 AAGCCTATACGTTTCTGTGGAGTAA
24 PRG1 0.46 TCCTTGTGCCTGCTCCTGTACTTGT
24 EXT1 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
24 DKFZP434J154 0.31 GCCCCACTGGACAACACTGATTCCT
11 MVP 0.34 CACCCAGCTGGTCCTGTGGATGGGA
16 VASP 0.31 TCCTCCATCACCTGAAACACTGGAC
9 ARL7 0.39 TGGACCCCACTGGCTGAGAATCTGG
1 NNMT 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
1 TAP1 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
2 PLOD2 0.37 GCCCCACTGGACAACACTGATTCCT
11 ATF3 0.42 CACCCAGCTGGTCCTGTGGATGGGA
9 PALM2-AKAP2 0.33 TGGACCCCACTGGCTGAGAATCTGG
2 IL8 0.34 GCCCCACTGGACAACACTGATTCCT
2 LOXL2 0.32 GCCCCACTGGACAACACTGATTCCT
7 IL4R 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
2 DGKA 0.32 GCCCCACTGGACAACACTGATTCCT
11 SEC61G 0.41 CACCCAGCTGGTCCTGTGGATGGGA
9 RGS3 0.37 TGGACCCCACTGGCTGAGAATCTGG
11 F2R 0.34 CACCCAGCTGGTCCTGTGGATGGGA
11 TPM2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
11 PSMB9 0.34 CACCCAGCTGGTCCTGTGGATGGGA
1 LOX 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
16 STC1 0.35 TCCTCCATCACCTGAAACACTGGAC
11 PTGER4 0.31 CACCCAGCTGGTCCTGTGGATGGGA
10 SMAD3 0.38 TTGGACATCTCTAGTGTAGCTGCCA
9 WNT5A 0.44 TGGACCCCAGTGGCTGAGAATCTGG
16 BDNF 0.34 TCCTCCATCACCTGAAACACTGGAC
16 TNFRSF1A 0.46 TCCTCCATCACCTGAAACACTGGAC
7 FLNC 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
10 DKFZP564K0822 0.34 TTGGACATCTCTAGTGTAGCTGCCA
10 FLOT1 0.38 TTGGACATCTCTAGTGTAGCTGCCA
9 PTRF 0.39 TGGACCCCACTGGCTGAGAATCTGG
10 HLA-B 0.36 TTGGACATCTCTAGTGTAGCTGCCA
2 MGC4083 0.32 GCCCCACTGGACAACACTGATTCCT
3 TNFRSF10B 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
3 PLAGL1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
2 PNMA2 0.38 GCCCCACTGGACAACACTGATTCCT
1 TFPI 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
16 GZMB 0.51 TCCTCCATCACCTGAAACACTGGAC
6 PLAUR 0.35 AAGCCTATACGTTTCTGTGGAGTAA
7 FSCN1 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
7 ERP70 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
10 AF1Q 0.3 TTGGACATCTCTAGTGTAGCTGCCA
3 HIC 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
6 COL6A1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
2 IFITM3 0.3 GCCCCACTGGACAACACTGATTCCT
11 MAP1B 0.38 CACCCAGCTGGTCCTGTGGATGGGA
16 FLJ46603 0.37 TCCTCCATCACCTGAAACACTGGAC
9 RAFTLIN 0.34 TGGACCCCACTGGCTGAGAATCTGG
1 RRAS 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
11 FTL 0.3 CACCCAGCTGGTCCTGTGGATGGGA
11 KIAA0877 0.31 CACCCAGCTGGTCCTGTGGATGGGA
24 MT1E 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
4 CDC10 0.51 AAATGTTTCCTTGTGCCTGCTCCTG
6 DOCK2 0.32 AAGCCTATACGTTTCTGTGGAGTAA
7 RIS1 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
10 BCAT1 0.42 TTGGACATCTCTAGTGTAGCTGCCA
16 PRF1 0.34 TCCTCCATCACCTGAAACACTGGAC
2 DBN1 0.36 GCCCCACTGGACAACACTGATTCCT
3 MT1K 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
2 TMSB10 0.42 GCCCCACTGGACAACACTGATTCCT
4 FLJ10350 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
3 C1orf24 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
1 NME7 0.46 TCCTGTACTTGTCCTCAGCTTGGGC
3 TMEM22 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
16 TPK1 0.37 TCCTCCATCACCTGAAACACTGGAC
3 ELK3 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
24 CYLD 0.4 TCCTTGTGCCTGCTCCTGTACTTGT
6 ADAMTS1 0.31 AAGCCTATACGTTTCTGTGGAGTAA
16 EHD2 0.41 TCCTCCATCACCTGAAACACTGGAC
24 ACTB 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 39
Methyl-GAG (methyl glyoxal bis amidinohydrazone
dihydrochloride) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 SSRP1 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
11 CTSC 0.35 CACCCAGCTGGTCCTGTGGATGGGA
7 LBR 0.38 ACTTGTCCTCAGCTTGGGCTTCTTC
4 EFNB2 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
24 SERPINA1 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
1 SSSCA1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
10 EZH2 0.36 TTGGACATCTCTAGTGTAGCTGCCA
2 MYB 0.33 GCCCCACTGGACAACACTGATTCCT
16 PRIM1 0.39 TCCTCCATCACCTGAAACACTGGAC
24 H2AFX 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
10 HMGA1 0.35 TTGGACATCTCTAGTGTAGCTGCCA
24 HMMR 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
11 TK2 0.42 CACCCAGCTGGTCCTGTGGATGGGA
4 WHSC1 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
2 DIAPH1 0.34 GCCCCACTGGACAACACTGATTCCT
2 LAMB3 0.31 GCCCCACTGGACAACACTGATTCCT
3 DPAGT1 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
2 UCK2 0.31 GCCCCACTGGACAACACTGATTCCT
24 SERPINB1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
3 MDN1 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
11 G0S2 0.43 CACCCAGCTGGTCCTGTGGATGGGA
9 MGC21654 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 GTSE1 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
16 TACC3 0.31 TCCTCCATCACCTGAAACACTGGAC
11 PLAC8 0.31 CACCCAGCTGGTCCTGTGGATGGGA
10 HNRPD 0.35 TTGGACATCTCTAGTGTAGCTGCCA
10 PNAS-4 0.3 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 40
HDAC inhibitors biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
10 FAU 0.33 TTGGACATCTCTAGTGTAGCTGCCA
9 NOL5A 0.33 TGGACCCCACTGGCTGAGAATCTGG
11 ANP32A 0.32 CACCCAGCTGGTCCTGTGGATGGGA
7 ARHGDIB 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
7 LBR 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 FABP5 0.33 TCCTCCATCACCTGAAACACTGGAC
10 ITM2A 0.32 TTGGACATCTCTAGTGTAGCTGCCA
16 SFRS5 0.34 TCCTCCATCACCTGAAACACTGGAC
11 IQGAP2 0.4 CACCCAGCTGGTCCTGTGGATGGGA
6 SLC7A6 0.35 AAGCCTATACGTTTCTGTGGAGTAA
3 SLA 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
16 IL2RG 0.31 TCCTCCATCACCTGAAACACTGGAC
1 MFNG 0.39 TCCTGTACTTGTCCTCAGCTTGGGC
10 GPSM3 0.32 TTGGACATCTCTAGTGTAGCTGCCA
10 PIM2 0.3 TTGGACATCTCTAGTGTAGCTGCCA
2 EVER1 0.35 GCCCCACTGGACAACACTGATTCCT
3 LRMP 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
1 ICAM2 0.44 TCCTGTACTTGTCCTCAGCTTGGGC
9 RIMS3 0.43 TGGACCCCACTGGCTGAGAATCTGG
10 FMNL1 0.35 TTGGACATCTCTAGTGTAGCTGCCA
3 MYB 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
24 PTPN7 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
11 LCK 0.48 CACCCAGCTGGTCCTGTGGATGGGA
7 CXorf9 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
24 RHOH 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
4 ZNFN1A1 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
11 CENTB1 0.45 CACCCAGCTGGTCCTGTGGATGGGA
3 LCP2 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
1 DBT 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
10 CEP1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
9 IL6R 0.31 TGGACCCCACTGGCTGAGAATCTGG
24 VAV1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
6 MAP4K1 0.3 AAGCCTATACGTTTCTGTGGAGTAA
24 CD28 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
10 PTP4A3 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 CD3G 0.33 CACCCAGCTGGTCCTGTGGATGGGA
1 LTB 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
2 USP34 0.44 GCCCCACTGGACAACACTGATTCCT
24 NVL 0.41 TCCTTGTGCCTGCTCCTGTACTTGT
7 CD8B1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
2 SFRS6 0.31 GCCCCACTGGACAACACTGATTCCT
1 LCP1 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
3 CXCR4 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
9 PSCDBP 0.33 TGGACCCCACTGGCTGAGAATCTGG
10 SELPLG 0.33 TTGGACATCTCTAGTGTAGCTGCCA
24 CD3Z 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 PRKCQ 0.33 TTGGACATCTCTAGTGTAGCTGCCA
2 CD1A 0.34 GCCCCACTGGACAACACTGATTCCT
10 GATA2 0.31 TTGGACATCTCTAGTGTAGCTGCCA
3 P2RX5 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
9 LAIR1 0.35 TGGACCCCACTGGCTGAGAATCTGG
2 C1orf38 0.4 GCCCCACTGGACAACACTGATTCCT
24 SH2D1A 0.44 TCCTTGTGCCTGCTCCTGTACTTGT
11 TRB@ 0.33 CACCCAGCTGGTCCTGTGGATGGGA
2 SEPT6 0.34 GCCCCACTGGACAACACTGATTCCT
6 HA-1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
24 DOCK2 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
3 WBSCR20C 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD3D 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
2 RNASE6 0.31 GCCCCACTGGACAACACTGATTCCT
4 SFRS7 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
6 WBSCR20A 0.3 AAGCCTATACGTTTCTGTGGAGTAA
10 NUP210 0.31 TTGGACATCTCTAGTGTAGCTGCCA
24 CD6 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
2 HNRPA1 0.3 GCCCCACTGGACAACACTGATTCCT
6 AIF1 0.34 AAGCCTATACGTTTCTGTGGAGTAA
9 CYFIP2 0.38 TGGACCCCACTGGCTGAGAATCTGG
24 GLTSCR2 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
6 C11orf2 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 ARHGAP15 0.33 TGGACCCCACTGGCTGAGAATCTGG
10 BIN2 0.35 TTGGACATCTCTAGTGTAGCTGCCA
7 SH3TC1 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
4 STAG3 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
7 TM6SF1 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
16 C15orf25 0.33 TCCTCCATCACCTGAAACACTGGAC
4 FLJ22457 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
3 PACAP 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
2 MGC2744 0.31 GCCCCACTGGACAACACTGATTCCT
TABLE 41
5-Fluorouracil biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
4 RPL18 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
9 RPL10A 0.39 TGGACCCCACTGGCTGAGAATCTGG
7 ANAPC5 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
1 EEF1B2 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
3 RPL13A 0.5 TGCCTGCTCCTGTACTTGTCCTCAG
7 RPS15 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
2 NDUFAB1 0.38 GCCCCACTGGACAACACTGATTCCT
4 APRT 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
16 ZNF593 0.34 TCCTCCATCACCTGAAACACTGGAC
4 MRP63 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
9 IL6R 0.41 TGGACCCCACTGGCTGAGAATCTGG
16 SART3 0.37 TCCTCCATCACCTGAAACACTGGAC
2 UCK2 0.32 GCCCCACTGGACAACACTGATTCCT
6 RPL17 0.31 AAGCCTATACGTTTCTGTGGAGTAA
11 RPS2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
24 PCCB 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
9 TOMM20 0.32 TGGACCCCACTGGCTGAGAATCTGG
10 SHMT2 0.32 TTGGACATCTCTAGTGTAGCTGCCA
24 RPLP0 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
11 GTF3A 0.32 CACCCAGCTGGTCCTGTGGATGGGA
9 STOML2 0.33 TGGACCCCACTGGCTGAGAATCTGG
4 DKFZp564J157 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
1 MRPS2 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
10 ALG5 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 CALML4 0.33 CACCCAGCTGGTCCTGTGGATGGGA
TABLE 42
Radiation sensitivity biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
9626 TRA1 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 ACTN4 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
16 CALM1 0.32 TCCTCCATCACCTGAAACACTGGAC
1 CD63 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
9 FKBP1A 0.38 TGGACCCCACTGGCTGAGAATCTGG
7 CALU 0.47 ACTTGTCCTCAGCTTGGGCTTCTTC
6 IQGAP1 0.37 TTGGACATCTCTAGTGTAGCTGCCA
16 MGC8721 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
24 STAT1 0.37 TGGACCCCACTGGCTGAGAATCTGG
1 TACC1 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
6 TM4SF8 0.33 AAGCCTATACGTTTCTGTGGAGTAA
16 CD59 0.31 TCCTCCATCACCTGAAACACTGGAC
24 CKAP4 0.45 TCCTTGTGCCTGCTCCTGTACTTGT
1 DUSP1 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
3 RCN1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
3 MGC8902 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
7 RRBP1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 PRNP 0.42 TTGGACATCTCTAGTGTAGCTGCCA
2 IER3 0.34 GCCCCACTGGACAACACTGATTCCT
2 MARCKS 0.43 GCCCCACTGGACAACACTGATTCCT
3 FER1L3 0.47 TGCCTGCTCCTGTACTTGTCCTCAG
7 SLC20A1 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
4 HEXB 0.46 AAATGTTTCCTTGTGCCTGCTCCTG
11 EXT1 0.47 CACCCAGCTGGTCCTGTGGATGGGA
4 TJP1 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
1 CTSL 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
1 SLC39A6 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
16 RIOK3 0.38 TCCTCCATCACCTGAAACACTGGAC
3 CRK 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
3 NNMT 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
10 TRAM2 0.35 TTGGACATCTCTAGTGTAGCTGCCA
1 ADAM9 0.52 TCCTGTACTTGTCCTCAGCTTGGGC
9 PLSCR1 0.35 TGGACCCCACTGGCTGAGAATCTGG
3 PRSS23 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
3 PLOD2 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
3 NPC1 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
11 TOB1 0.37 CACCCAGCTGGTCCTGTGGATGGGA
11 GFPT1 0.47 CACCCAGCTGGTCCTGTGGATGGGA
4 IL8 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
16 PYGL 0.46 TCCTCCATCACCTGAAACACTGGAC
10 LOXL2 0.49 TTGGACATCTCTAGTGTAGCTGCCA
24 KIAA0355 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
10 UGDH 0.49 TTGGACATCTCTAGTGTAGCTGCCA
3 PURA 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
6 ULK2 0.37 AAGCCTATACGTTTCTGTGGAGTAA
2 CENTG2 0.35 GCCCCACTGGACAACACTGATTCCT
2 CAP350 0.31 GCCCCACTGGACAACACTGATTCCT
1 CXCL1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
6 BTN3A3 0.35 AAGCCTATACGTTTCTGTGGAGTAA
6 WNT5A 0.3 AAGCCTATACGTTTCTGTGGAGTAA
4 FOXF2 0.44 AAATGTTTCCTTGTGCCTGCTCCTG
2 LPHN2 0.34 GCCCCACTGGACAACACTGATTCCT
9 CDH11 0.39 TGGACCCCACTGGCTGAGAATCTGG
16 P4HA1 0.33 TCCTCCATCACCTGAAACACTGGAC
11 GRP58 0.44 CACCCAGCTGGTCCTGTGGATGGGA
9 DSIPI 0.44 TGGACCCCACTGGCTGAGAATCTGG
6 MAP1LC3B 0.5 AAGCCTATACGTTTCTGTGGAGTAA
4 GALIG 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
16 IGSF4 0.4 TCCTCCATCACCTGAAACACTGGAC
9 IRS2 0.35 TGGACCCCACTGGCTGAGAATCTGG
11 ATP2A2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
1 OGT 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
6 TNFRSF10B 0.31 AAGCCTATACGTTTCTGTGGAGTAA
11 KIAA1128 0.35 CACCCAGCTGGTCCTGTGGATGGGA
11 TM4SF1 0.35 CACCCAGCTGGTCCTGTGGATGGGA
3 RIPK2 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
10 NR1D2 0.47 TTGGACATCTCTAGTGTAGCTGCCA
10 SSA2 0.36 TTGGACATCTCTAGTGTAGCTGCCA
6 NQO1 0.4 AAGCCTATACGTTTCTGTGGAGTAA
3 ASPH 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
7 ASAH1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
9 MGLL 0.35 TGGACCCCACTGGCTGAGAATCTGG
6 SERPINB6 0.51 AAGCCTATACGTTTCTGTGGAGTAA
24 HSPA5 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
24 ZFP36L1 0.39 TCCTTGTGCCTGCTCCTGTACTTGT
7 COL4A1 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
7 NIPA2 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
4 FKBP9 0.48 AAATGTTTCCTTGTGCCTGCTCCTG
2 IL6ST 0.4 GCCCCACTGGACAACACTGATTCCT
10 DKFZP564G2022 0.39 TTGGACATCTCTAGTGTAGCTGCCA
9 PPAP2B 0.33 TGGACCCCACTGGCTGAGAATCTGG
11 MAP1B 0.3 CACCCAGCTGGTCCTGTGGATGGGA
9 MAPK1 0.3 TGGACCCCACTGGCTGAGAATCTGG
7 MYO1B 0.38 ACTTGTCCTCAGCTTGGGCTTCTTC
3 CAST 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
4 RRAS2 0.52 AAATGTTTCCTTGTGCCTGCTCCTG
7 QKI 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 LHFPL2 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
2 SEPT10 0.38 GCCCCACTGGACAACACTGATTCCT
6 ARHE 0.5 AAGCCTATACGTTTCTGTGGAGTAA
6 KIAA1078 0.34 AAGCCTATACGTTTCTGTGGAGTAA
1 FTL 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
4 KIAA0877 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
6 PLCB1 0.3 AAGCCTATACGTTTCTGTGGAGTAA
3 KIAA0802 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
3 RAB3GAP 0.43 TGCCTGCTCCTGTACTTGTCCTCAG
3 SERPINB1 0.46 TGCCTGCTCCTGTACTTGTCCTCAG
4 TIMM17A 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
10 SOD2 0.35 TTGGACATCTCTAGTGTAGCTGCCA
10 HLA-A 0.33 TTGGACATCTCTAGTGTAGCTGCCA
11 NOMO2 0.43 CACCCAGCTGGTCCTGTGGATGGGA
1 LOC55831 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
11 PHLDA1 0.32 CACCCAGCTGGTCCTGTGGATGGGA
9 TMEM2 0.47 TGGACCCCACTGGCTGAGAATCTGG
7 MLPH 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
7 FAD104 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
11 LRRC5 0.42 CACCCAGCTGGTCCTGTGGATGGGA
10 RAB7L1 0.41 TTGGACATCTCTAGTGTAGCTGCCA
1 FLJ35036 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
16 DOCK10 0.41 TCCTCCATCACCTGAAACACTGGAC
6 LRP12 0.36 AAGCCTATACGTTTCTGTGGAGTAA
7 TXNDC5 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
3 CDC14B 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
11 HRMT1L1 0.38 CACCCAGCTGGTCCTCTGGATGGGA
10 DNAJC10 0.31 TTGGACATCTCTAGTGTAGCTGCCA
2 TNPO1 0.33 GCCCCACTGGACAACACTGATTCCT
4 LONP 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
6 AMIGO2 0.38 AAGCCTATACGTTTCTGTGGAGTAA
3 DNAPTP6 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
10 ADAMTS1 0.37 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 43
Rituximab (e.g., Mabthera) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 PSMB2 0.89 TCCTCCATCACCTGAAACACTGGAC
6 BAT1 0.88 AAGCCTATACGTTTCTGTGGAGTAA
24 ASCC3L1 0.89 TCCTTGTGCCTGCTCCTGTACTTGT
4 SET 0.94 AAATGTTTCCTTGTGCCTGCTCCTG
24 YWHAZ 0.83 TCCTTGTGCCTGCTCCTGTACTTGT
9 GLUL 0.8 TGGACCCCACTGGCTGAGAATCTGG
24 LDHA 0.8 TCCTTGTGCCTGCTCCTGTACTTGT
4 HMGB1 0.84 AAATGTTTCCTTGTGCCTGCTCCTG
4 SFRS2 0.87 AAATGTTTCCTTGTGCCTGCTCCTG
1 DPYSL2 0.82 TCCTGTACTTGTCCTCAGCTTGGGC
11 MGC8721 0.82 CACCCAGCTGGTCCTGTGGATGGGA
3 NOL5A 0.86 TGCCTGCTCCTGTACTTGTCCTCAG
4 SFRS10 0.88 AAATGTTTCCTTGTGCCTGCTCCTG
1 SF3B1 0.82 TCCTGTACTTGTCCTCAGCTTGGGC
3 K-ALPHA-1 0.86 TGCCTGCTCCTGTACTTGTCCTCAG
9 TXNRD1 0.86 TGGACCCCACTGGCTGAGAATCTGG
11 ARHGDIB 0.83 CACCCAGCTGGTCCTGTGGATGGGA
10 ZFP36L2 0.92 TTGGACATCTCTAGTGTAGCTGCCA
9 DHX15 0.81 TGGACCCCACTGGCTGAGAATCTGG
11 SOX4 0.85 CACCCAGCTGGTCCTGTGGATGGGA
766 GRSF1 0.81 TGGACCCCACTGGCTGAGAATCTGG
2 MCM3 0.85 GCCCCACTGGACAACACTGATTCCT
16 IFITM1 0.82 TCCTCCATCACCTGAAACACTGGAC
16 RPA2 0.86 TCCTCCATCACCTGAAACACTGGAC
7 LBR 0.87 ACTTGTCCTCAGCTTGGGCTTCTTC
6 CKS1B 0.85 AAGCCTATACGTTTCTGTGGAGTAA
9 NASP 0.82 TGGACCCCACTGGCTGAGAATCTGG
16 HNRPDL 0.81 TCCTCCATCACCTGAAACACTGGAC
3 CUGBP2 0.81 TGCCTGCTCCTGTACTTGTCCTCAG
24 PTBP1 0.87 TCCTTGTGCCTGCTCCTGTACTTGT
10 ARL7 0.83 TTGGACATCTCTAGTGTAGCTGCCA
7 CTCF 0.83 ACTTGTCCTCAGCTTGGGCTTCTTC
24 HMGCR 0.86 TCCTTGTGCCTGCTCCTGTACTTGT
4 ITM2A 0.88 AAATGTTTCCTTGTGCCTGCTCCTG
24 SFRS3 0.93 TCCTTGTGCCTGCTCCTGTACTTGT
24 SRPK2 0.82 TCCTTGTGCCTGCTCCTGTACTTGT
11 JARID2 0.92 CACCCAGCTGGTCCTGTGGATGGGA
1 M96 0.84 TCCTGTACTTGTCCTCAGCTTGGGC
16 MAD2L1 0.87 TCCTCCATCACCTGAAACACTGGAC
7 SATB1 0.81 ACTTGTCCTCAGCTTGGGCTTCTTC
7 TMPO 0.9 ACTTGTCCTCAGCTTGGGCTTCTTC
7 SIVA 0.84 ACTTGTCCTCAGCTTGGGCTTCTTC
16 SEMA4D 0.9 TCCTCCATCACCTGAAACACTGGAC
24 TFDP2 0.87 TCCTTGTGCCTGCTCCTGTACTTGT
6 SKP2 0.86 AAGCCTATACGTTTCTGTGGAGTAA
2 SH3YL1 0.88 GCCCCACTGGACAACACTGATTCCT
16 RFC4 0.87 TCCTCCATCACCTGAAACACTGGAC
6 PCBP2 0.83 AAGCCTATACGTTTCTGTGGAGTAA
2 IL2RG 0.84 GCCCCACTGGACAACACTGATTCCT
1 CDC45L 0.89 TCCTGTACTTGTCCTCAGCTTGGGC
10 GTSE1 0.83 TTGGACATCTCTAGTGTAGCTGCCA
6 KIF11 0.85 AAGCCTATACGTTTCTGTGGAGTAA
10 FEN1 0.88 TTGGACATCTCTAGTGTAGCTGCCA
9 MYB 0.9 TGGACCCCACTGGCTGAGAATCTGG
16 LCK 0.87 TCCTCCATCACCTGAAACACTGGAC
2 CENPA 0.84 GCCCCACTGGACAACACTGATTCCT
2 CCNE2 0.84 GCCCCACTGGACAACACTGATTCCT
10 H2AFX 0.88 TTGGACATCTCTAGTGTAGCTGCCA
16 SNRPG 0.84 TCCTCCATCACCTGAAACACTGGAC
24 CD3G 0.94 TCCTTGTGCCTGCTCCTGTACTTGT
7 STK6 0.9 ACTTGTCCTCAGCTTGGGGTTCTTC
3 PTP4A2 0.81 TGCCTGCTCCTGTACTTGTCCTCAG
4 FDFT1 0.91 AAATGTTTCCTTGTGCCTGCTCCTG
4 HSPA8 0.84 AAATGTTTCCTTGTGCCTGCTCCTG
24 HNRPR 0.94 TCCTTGTGCCTGCTCCTGTACTTGT
4 MCM7 0.92 AAATGTTTCCTTGTGCCTGCTCCTG
9 SFRS6 0.85 TGGACCCCACTGGCTGAGAATCTGG
11 PAK2 0.8 CACCCAGCTGGTCCTGTGGATGGGA
1 LCP1 0.85 TCCTGTACTTGTCCTCAGCTTGGGC
7 STAT3 0.81 ACTTGTCCTCAGCTTGGGCTTCTTC
24 OK/SW-cl.56 0.8 TCCTTGTGCCTGCTCCTGTACTTGT
9 WHSC1 0.81 TGGACCCCACTGGCTGAGAATCTGG
6 DIAPH1 0.88 AAGCCTATACGTTTCTGTGGAGTAA
1 KIF2C 0.88 TCCTGTACTTGTCCTCAGCTTGGGC
11 HDGFRP3 0.89 CACCCAGCTGGTCCTGTGGATGGGA
10 PNMA2 0.93 TTGGACATCTCTAGTGTAGCTGCCA
1 GATA3 0.93 TCCTGTACTTGTCCTCAGCTTGGGC
4 BUB1 0.88 AAATGTTTCCTTGTGCCTGCTCCTG
11 TPX2 0.8 CACCCAGCTGGTCCTGTGGATGGGA
24 SH2D1A 0.86 TCCTTGTGCCTGCTCCTGTACTTGT
16 TNFAIP8 0.9 TCCTCCATCACCTGAAACACTGGAC
4 CSE1L 0.83 AAATGTTTCCTTGTGCCTGCTCCTG
1 MCAM 0.8 TCCTGTACTTGTCCTCAGCTTGGGC
2 AF1Q 0.83 GCCCCACTGGACAACACTGATTCCT
11 CD47 0.86 CACCCAGCTGGTCCTGTGGATGGGA
6 SFRS1 0.85 AAGCCTATACGTTTCTGTGGAGTAA
1 FYB 0.92 TCCTGTACTTGTCCTCAGCTTGGGC
7 TRB@ 0.84 ACTTGTCCTCAGCTTGGGCTTCTTC
2 CXCR4 0.94 GCCCCACTGGACAACACTGATTCCT
16 H3F3B 0.84 TCCTCCATCACCTGAAACACTGGAC
7 MKI67 0.83 ACTTGTCCTCAGCTTGGGCTTCTTC
24 MAC30 0.82 TCCTTGTGCCTGCTCCTGTACTTGT
6 ARID5B 0.88 AAGCCTATACGTTTCTGTGGAGTAA
6 LOC339287 0.81 AAGCCTATACGTTTCTGTGGAGTAA
24 CD3D 0.82 TCCTTGTGCCTGCTCCTGTACTTGT
6 ZAP70 0.87 AAGCCTATACGTTTCTGTGGAGTAA
16 LAPTM4B 0.83 TCCTCCATCACCTGAAACACTGGAC
24 SFRS7 0.87 TCCTTGTGCCTGCTCCTGTACTTGT
6 HNRPA1 0.9 AAGCCTATACGTTTCTGTGGAGTAA
6 HSPCA 0.88 AAGCCTATACGTTTCTGTGGAGTAA
24 AIF1 0.82 TCCTTGTGCCTGCTCCTGTACTTGT
6 GTF3A 0.87 AAGCCTATACGTTTCTGTGGAGTAA
10 MCM5 0.91 TTGGACATCTCTAGTGTAGCTGCCA
6 GTL3 0.85 AAGCCTATACGTTTCTGTGGAGTAA
3 ZNF22 0.89 TGCCTGCTCCTGTACTTGTCCTCAG
2 FLJ22794 0.83 GCCCCACTGGACAACACTGATTCCT
7 LZTFL1 0.89 ACTTGTCCTCAGCTTGGGCTTCTTC
16 e(y)2 0.87 TCCTCCATCACCTGAAACACTGGAC
16 FLJ20152 0.92 TCCTCCATCACCTGAAACACTGGAC
7 C10orf3 0.86 ACTTGTCCTCAGCTTGGGCTTCTTC
4 NRN1 0.86 AAATGTTTCCTTGTGCCTGCTCCTG
2 FLJ10858 0.81 GCCCCACTGGACAACACTGATTCCT
2 BCL11B 0.89 GCCCCACTGGACAACACTGATTCCT
6 ASPM 0.91 AAGCCTATACGTTTCTGTGGAGTAA
10 LEF1 0.9 TTGGACATCTCTAGTGTAGCTGCCA
7 LOC146909 0.83 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 44
5-Aza-2′-deoxycytidine (decitabine) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
10 CD99 0.31 TTGGACATCTCTAGTGTAGCTGCCA
1 SNRPA 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
1 CUGBP2 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
2 STAT5A 0.32 GCCCCACTGGACAACACTGATTCCT
10 SLA 0.38 TTGGACATCTCTAGTGTAGCTGCCA
9 IL2RG 0.33 TGGACCCCACTGGCTGAGAATCTGG
7 GTSE1 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
9 MYB 0.36 TGGACCCCACTGGCTGAGAATCTGG
1 PTPN7 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
1 CXorf9 0.42 TCCTGTACTTGTCCTCAGCTTGGGC
4 RHOH 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
6 ZNFN1A1 0.33 AAGCCTATACGTTTCTGTGGAGTAA
11 CENTB1 0.35 CACCCAGCTGGTCCTGTGGATGGGA
4 LCP2 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
9 HIST1H4C 0.33 TGGACCCCACTGGCTGAGAATCTGG
3 CCR7 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
24 APOBEC3B 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
9 MCM7 0.31 TGGACCCCACTGGCTGAGAATCTGG
6 LCP1 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 SELPLG 0.4 TGGACCCCACTGGCTGAGAATCTGG
1 CD3Z 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
3 PRKCQ 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
2 GZMB 0.32 GCCCCACTGGACAACACTGATTCCT
6 SCN3A 0.4 AAGCCTATACGTTTCTGTGGAGTAA
3 LAIR1 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
2 SH2D1A 0.35 GCCCCACTGGACAACACTGATTCCT
7 SEPT6 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
7 CG018 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
9 CD3D 0.31 TGGACCCCACTGGCTGAGAATCTGG
24 C18orf10 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
16 PRF1 0.31 TCCTCCATCACCTGAAACACTGGAC
10 AIF1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
7 MCM5 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 LPXN 0.35 TCCTCCATCACCTGAAACACTGGAC
4 C22orf18 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
4 ARHGAP15 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
2 LEF1 0.43 GCCCCACTGGACAACACTGATTCCT
TABLE 45
Idarubicin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
9 SLC9A3R1 0.31 TGGACCCCACTGGCTGAGAATCTGG
9 RPS19 0.32 TGGACCCCACTGGCTGAGAATCTGG
1 ITM2A 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
6 SSBP2 0.31 AAGCCTATACGTTTCTGTGGAGTAA
1 CXorf9 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
16 RHOH 0.32 TCCTCCATCACCTGAAACACTGGAC
4 ZNFN1A1 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
11 FXYD2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
9 CCR9 0.39 TGGACCCCACTGGCTGAGAATCTGG
10 NAP1L1 0.3 TTGGACATCTCTAGTGTAGCTGCCA
4 CXCR4 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
1 SH2D1A 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
6 CD1A 0.3 AAGCCTATACGTTTCTGTGGAGTAA
4 TRB@ 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
2 SEPT6 0.32 GCCCCACTGGACAACACTGATTCCT
3 RPS2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
3 DOCK2 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD3D 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
2 CD6 0.3 GCCCCACTGGACAACACTGATTCCT
7 ZAP70 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
3 AIF1 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
3 CD1E 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 CYFIP2 0.3 TTGGACATCTCTAGTGTAGCTGCCA
1 ADA 0.41 TCCTGTACTTGTCCTCAGCTTGGGC
24 TRIM 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
3 GLTSCR2 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
2 FLJ10858 0.35 GCCCCACTGGACAACACTGATTCCT
1 BCL11B 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
3 GIMAP6 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
10 STAG3 0.34 TTGGACATCTCTAGTGTAGCTGCCA
7 UBASH3A 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 46
Melphalan biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
 9 CD99 0.31 TGGACCCCACTGGCTGAGAATCTGG
 3 HLA-DPB1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
 3 ARHGDIB 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
 11 IFITM1 0.33 CACCCAGCTGGTCCTGTGGATGGGA
 24 UBE2L6 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
 24 ITM2A 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
 4 SERPINA1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
 4 STAT5A 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
 24 INPP5D 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
 3 DGKA 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
 3 SATB1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
 4 SEMA4D 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
 11 TFDP2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
 16 SLA 0.49 TCCTCCATCACCTGAAACACTGGAC
 11 IL2RG 0.42 CACCCAGCTGGTCCTGTGGATGGGA
 24 CD48 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
 7 MFNG 0.48 ACTTGTCCTCAGCTTGGGCTTCTTC
 11 ALOX5AP 0.3 CACCCAGCTGGTCCTGTGGATGGGA
 6 GPSM3 0.31 AAGCCTATACGTTTCTGTGGAGTAA
 2 PSMB9 0.34 GCCCCACTGGACAACACTGATTCCT
 9 KIAA0711 0.37 TGGACCCCACTGGCTGAGAATCTGG
 4 SELL 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
 3 ADA 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
 10 EDG1 0.49 TTGGACATCTCTAGTGTAGCTGCCA
 11 RIMS3 0.3 CACCCAGCTGGTCCTGTGGATGGGA
 6 FMNL1 0.33 AAGCCTATACGTTTCTGTGGAGTAA
 2 MYB 0.3 GCCCCACTGGACAACACTGATTCCT
 4 PTPN7 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
 4 LCK 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
 11 CXorf9 0.55 CACCCAGCTGGTCCTGTGGATGGGA
 9 RHOH 0.35 TGGACCCCACTGGCTGAGAATCTGG
 7 ZNFN1A1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
 3 CENTB1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
 24 LCP2 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
 11 FXYD2 0.55 CACCCAGCTGGTCCTGTGGATGGGA
 6 CD1D 0.44 AAGCCTATACGTTTCTGTGGAGTAA
 3 BATF 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
 16 STAT4 0.33 TCCTCCATCACCTGAAACACTGGAC
 16 VAV1 0.31 TCCTCCATCACCTGAAACACTGGAC
 11 MAP4K1 0.39 CACCCAGCTGGTCCTGTGGATGGGA
 1 CCR7 0.44 TCCTGTACTTGTCCTCAGCTTGGGC
 1 PDE4C 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
 6 CD3G 0.32 AAGCCTATACGTTTCTGTGGAGTAA
 10 CCR9 0.36 TTGGACATCTCTAGTGTAGGTGCCA
 1 SP110 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
 4 LCP1 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
 2 IFI16 0.32 GCCCCACTGGACAACACTGATTCCT
 7 CXCR4 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
 6 ARHGEF6 0.47 AAGCCTATACGTTTCTGTGGAGTAA
 10 GATA3 0.55 TTGGACATCTCTAGTGTAGCTGCCA
 10 SELPLG 0.47 TTGGACATCTCTAGTGTAGCTGCCA
 9 SEG31L2 0.36 TGGACCCCACTGGCTGAGAATCTGG
 10 CD3Z 0.5 TTGGACATCTCTAGTGTAGCTGCCA
 2 PRKCQ 0.56 GCCGCACTGGACAACACTGATTCCT
 16 SH2D1A 0.33 TCCTCCATCACCTGAAACACTGGAC
 3 GZMB 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
 3 CD1A 0.55 TGCCTGCTCCTGTACTTGTCCTCAG
 11 SCN3A 0.64 CACCCAGCTGGTCCTGTGGATGGGA
 11 LAIR1 0.32 CACCCAGCTGGTCCTGTGGATGGGA
 10 FYB 0.49 TTGGACATCTCTAGTGTAGCTGCCA
 10 TRB@ 0.37 TTGGACATCTCTAGTGTAGCTGCCA
 2 SEPT6 0.32 GCCCCACTGGACAACACTGATTCCT
 2 HA-1 0.48 GCCCCACTGGACAACACTGATTCCT
 10 DOCK2 0.33 TTGGACATCTCTAGTGTAGCTGCCA
 4 CG018 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
 16 CD3D 0.32 TCCTCCATCACCTGAAACACTGGAC
 3 T3JAM 0.41 TGCCTGCTCCTGTACTTGTCCTCAG
 1 FNBP1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
 6 CD6 0.36 AAGCCTATACGTTTCTGTGGAGTAA
 9 ZAP70 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 LST1 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 GPR65 0.42 TTGGACATCTCTAGTGTAGCTGCCA
2 PRF1 0.41 GCCCCACTGGACAACACTGATTCCT
2 AIF1 0.32 GCCCCACTGGACAACACTGATTCCT
16 FLJ20331 0.42 TCCTCCATCACCTGAAACACTGGAC
11 RAG2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
1 WDR45 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
1 CD1E 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
16 CYFIP2 0.4 TCCTCCATCACCTGAAACACTGGAC
11 TARP 0.36 CACCCAGCTGGTCCTGTGGATGGGA
7 TRIM 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 RPL10L 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 GLTSCR2 0.46 CACCCAGCTGGTCCTGTGGATGGGA
6 GIMAP5 0.32 AAGCCTATACGTTTCTGTGGAGTAA
3 ARHGAP15 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
2 NOTCH1 0.34 GCCCCACTGGACAACACTGATTCCT
9 BIN2 0.36 TGGACCCCACTGGCTGAGAATCTGG
24 C13orf18 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
1 CECR1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
24 BCL11B 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
24 GIMAP6 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 STAG3 0.58 TTGGACATCTCTAGTGTAGCTGCCA
1 TM6SF1 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 HSD17B7 0.32 GCCCCACTGGACAACACTGATTCCT
7 UBASH3A 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
16 MGC5566 0.45 TCCTCCATCACCTGAAACACTGGAC
6 FLJ22457 0.39 AAGCCTATACGTTTCTGTGGAGTAA
3 TPK1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
4 PHF11 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
24 DKFZP434B0335 0.4 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 47
IL4-PR38 fusion protein biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 MCL1 0.3 TCCTGCATCACCTGAAACACTGGAC
11 DDX23 0.35 CACCCAGCTGGTCCTGTGGATGGGA
3 JUNB 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
11 ZFP36 0.33 CACCCAGCTGGTCCTGTGGATGGGA
7 IFITM1 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
9 CKS1B 0.3 TGGACCCCACTGGCTGAGAATCTGG
2 SERPINA1 0.31 GCCCCACTGGACAACACTGATTCCT
7 IL4R 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
7 CLDN3 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
4 ARL4A 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
24 HMMR 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
24 FLJ12671 0.42 TCCTTGTGCCTGCTCCTGTACTTGT
2 ANKHD1 0.42 GCCCCACTGGACAACACTGATTCCT
7 KIF2C 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
11 RPA3 0.34 CACCCAGCTGGTCCTGTGGATGGGA
3 MCCC2 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
24 CDH17 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
10 LSM5 0.33 TTGGACATCTCTAGTGTAGCTGCCA
2 PRF1 0.32 GCCCCACTGGACAACACTGATTCCT
16 ROD1 0.34 TCCTCCATCACCTGAAACACTGGAC
16 FLJ12666 0.37 TCCTCCATCACCTGAAACACTGGAC
10 SUV420H1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
16 MUC13 0.36 TCCTCCATCACCTGAAACACTGGAC
2 C13orf18 0.35 GCCCCACTGGACAACACTGATTCCT
3 CDCA8 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
TABLE 48
Valproic acid (VPA) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
4 STOM 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
9 TNFAIP3 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 ASNS 0.31 GCCCCACTGGACAACACTGATTCCT
3 GARS 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
6 CXCR4 0.32 AAGCCTATACGTTTCTGTGGAGTAA
9 EGLN3 0.31 TGGACCCCACTGGCTGAGAATCTGG
1 LBH 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
3 GDF15 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
TABLE 49
All-trans retinoic acid (ATRA) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 PPIB 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 ZFP36L2 0.48 AAGCCTATACGTTTCTGTGGAGTAA
7 IFI30 0.46 ACTTGTCCTCAGCTTGGGCTTCTTC
16 USP7 0.35 TCCTCCATCACCTGAAACACTGGAC
16 SRM 0.43 TCCTCCATCACCTGAAACACTGGAC
3 SH3BP5 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 ALDOC 0.41 TTGGACATCTCTAGTGTAGCTGCCA
7 FADS2 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
10 GUSB 0.38 TTGGACATCTCTAGTGTAGCTGCCA
1 PSCD1 0.48 TCCTGTACTTGTCCTCAGCTTGGGC
1 IQGAP2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
2 STS 0.34 GCCCCACTGGACAACACTGATTCCT
9 MFNG 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 FLI1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
9 PIM2 0.35 TGGACCCCACTGGCTGAGAATCTGG
1 INPP4A 0.54 TCCTGTACTTGTCCTCAGCTTGGGC
2 LRMP 0.51 GCCCCACTGGACAACACTGATTCCT
4 ICAM2 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
11 EVI2A 0.33 CACCCAGCTGGTCCTGTGGATGGGA
4 MAL 0.46 AAATGTTTCCTTGTGCCTGCTCCTG
10 BTN3A3 0.43 TTGGACATCTCTAGTGTAGCTGCCA
10 PTPN7 0.4 TTGGACATCTCTAGTGTAGCTGCCA
10 IL10RA 0.42 TTGGACATCTCTAGTGTAGCTGCCA
6 SPI1 0.41 AAGCCTATACGTTTCTGTGGAGTAA
3 TRAF1 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
24 ITGB7 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
9 ARHGAP6 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 MAP4K1 0.52 GCCCCACTGGACAACACTGATTCCT
6 CD28 0.34 AAGCCTATACGTTTCTGTGGAGTAA
16 PTP4A3 0.3 TCCTCCATCACCTGAAACACTGGAC
7 LTB 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 Clorf38 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
16 WBSCR22 0.53 TCCTCCATCACCTGAAACACTGGAC
16 CD8B1 0.35 TCCTCCATCACCTGAAACACTGGAC
7 LCP1 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
16 FLJ13052 0.31 TCCTCCATCACCTGAAACACTGGAC
10 MEF2C 0.71 TTGGACATCTCTAGTGTAGCTGCCA
4 PSCDBP 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
9 IL16 0.51 TGGACCCCACTGGCTGAGAATCTGG
3 SELPLG 0.53 TGCCTGCTCCTGTACTTGTCCTCAG
4 MAGEA9 0.6 AAATGTTTCCTTGTGCCTGCTCCTG
16 LAIR1 0.43 TCCTCCATCACCTGAAACACTGGAC
16 TNFRSF25 0.53 TCCTCCATCACCTGAAACACTGGAC
7 EVI2B 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
24 IGJ 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
4 PDCD4 0.47 AAATGTTTCCTTGTGCCTGCTCCTG
11 RASA4 0.52 CACCCAGCTGGTCCTGTGGATGGGA
6 HA-1 0.73 AAGCCTATACGTTTCTGTGGAGTAA
1 PLCL2 0.47 TCCTGTACTTGTCCTCAGCTTGGGC
6 RNASE6 0.31 AAGCCTATACGTTTCTGTGGAGTAA
10 WBSCR20C 0.35 TTGGACATCTCTAGTGTAGCTGCCA
6 NUP210 0.36 AAGCCTATACGTTTCTGTGGAGTAA
7 RPL10L 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
9 C11orf2 0.33 TGGACCCCACTGGCTGAGAATCTGG
3 CABC1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
1 ARHGEF3 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
3 TAPBPL 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
4 CHST12 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
3 FKBP11 0.54 TGCCTGCTCCTGTACTTGTCCTCAG
10 FLJ35036 0.42 TTGGACATCTCTAGTGTAGCTGCCA
11 MYLIP 0.38 CACCCAGCTGGTCCTGTGGATGGGA
7 TXNDC5 0.31 ACTTGTCCTCAGCTTGGGCTTGTTC
16 PACAP 0.3 TCCTCCATCACCTGAAACACTGGAC
1 TOSO 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
9 PNAS-4 0.37 TGGACCCCACTGGCTGAGAATCTGG
6 IL21R 0.57 AAGCCTATACGTTTCTGTGGAGTAA
24 TCF4 0.64 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 50
Cytoxan biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 C6orf29 0.31 AAGCCTATACGTTTCTGTGGAGTAA
4 TRIM31 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
2 CD69 0.37 GCCCCACTGGACAACACTGATTCCT
7 LRRN3 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 GPR35 0.41 TCCTCCATCACCTGAAACACTGGAC
10 CDW52 0.48 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 51
Topotecan (Hycamtin) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 K-ALPHA-1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
6 CSDA 0.32 AAGCCTATACGTTTCTGTGGAGTAA
10 UCHL1 0.32 TTGGACATCTCTAGTGTAGCTGCCA
16 NAP1L1 0.3 TCCTCCATCACCTGAAACACTGGAC
1 ATP5G2 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
6 HDGFRP3 0.3 AAGCCTATACGTTTCTGTGGAGTAA
2 IFI44 0.3 GCCCCACTGGACAACACTGATTCCT
TABLE 52
Suberoylanilide hydroxamic acid (SAHA,
vorinostat, Zolinza) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
24 NOL5A 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
3 STOM 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
4 SIAT1 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
2 CUGBP2 0.39 GCCCCACTGGACAACACTGATTCCT
9 GUSB 0.33 TGGACCCCACTGGCTGAGAATCTGG
24 ITM2A 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
7 JARID2 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
11 RUNX3 0.32 CACCCAGCTGGTCCTGTGGATGGGA
3 ICAM2 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
6 PTPN7 0.37 AAGCCTATACGTTTCTGTGGAGTAA
10 VAV1 0.35 TTGGACATCTCTAGTGTAGCTGCCA
6 PTP4A3 0.42 AAGCCTATACGTTTCTGTGGAGTAA
7 MCAM 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
7 MEF2C 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 IDH3B 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
16 RFP 0.31 TCCTCCATCACCTGAAACACTGGAC
1 SEPT6 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 SLC43A3 0.34 GCCCCACTGGACAACACTGATTCCT
9 WBSCR20C 0.46 TGGACCCCACTGGCTGAGAATCTGG
1 SHMT2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
1 GLTSCR2 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 CABC1 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
7 FLJ20859 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
1 FLJ20010 0.51 TCCTGTACTTGTCCTCAGCTTGGGC
24 MGC10993 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
16 FKBP11 0.31 TCCTCCATCACCTGAAACACTGGAC
TABLE 53
Depsipeptide (FR901228) biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
4 ZFP36L2 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
3 TRIB2 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
7 LCP2 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
3 C6orf32 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
11 IL16 0.34 CACCCAGCTGGTCCTGTGGATGGGA
6 CACNA1G 0.31 AAGCCTATACGTTTCTGTGGAGTAA
2 SPDEF 0.31 GCCCCACTGGACAACACTGATTCCT
16 HAB1 0.39 TCCTCCATCACCTGAAACACTGGAC
9 TOSO 0.31 TGGACCCCACTGGCTGAGAATCTGG
6 ARHGAP25 0.33 AAGCCTATACGTTTCTGTGGAGTAA
TABLE 54
Bortezomib biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
4 PLEKHB2 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
9 ARPC1B 0.32 TGGACCCCACTGGCTGAGAATCTGG
24 MX1 0.39 TCCTTGTGCCTGCTCCTGTACTTGT
6 CUGBP2 0.37 AAGCCTATACGTTTCTGTGGAGTAA
6 IFI16 0.33 AAGCCTATACGTTTCTGTGGAGTAA
4 TNFRSF14 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
9 SP110 0.39 TGGACCCCACTGGCTGAGAATCTGG
9 ELF1 0.33 TGGACCCCACTGGCTGAGAATCTGG
1 LPXN 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
1 IFRG28 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 LEF1 0.33 GCCCCACTGGACAACACTGATTCCT
1 PYCARD 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 55
Leukeran biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 SSRP1 0.31 GCCCCACTGGACAACACTGATTCCT
4 ALDOC 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
3 C1QR1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
1 TTF1 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 PRIM1 0.31 GCCCCACTGGACAACACTGATTCCT
16 USP34 0.38 TCCTCCATCACCTGAAACACTGGAC
1 TK2 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
3 GOLGIN-67 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 NPD014 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
16 KIAA0220 0.31 TCCTCCATCACCTGAAACACTGGAC
10 SLC43A3 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 WBSCR20C 0.3 CACCCAGCTGGTCCTGTGGATGGGA
3 ICAM2 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
9 TEX10 0.32 TGGACCCCACTGGCTGAGAATCTGG
7 CHD7 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
10 SAMSN1 0.34 TTGGACATCTCTAGTGTAGCTGCCA
7 TPRT 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 56
Fludarabine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
7 HLA-E 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
3 BAT3 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
9 ENO2 0.37 TGGACCCCACTGGCTGAGAATCTGG
1 UBE2L6 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
3 CUGBP2 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
2 ITM2A 0.32 GCCCCACTGGACAACACTGATTCCT
2 PALM2-AKAP2 0.41 GCCCCACTGGACAACACTGATTCCT
2 JARID2 0.33 GCCCCACTGGACAACACTGATTCCT
9 DGKA 0.33 TGGACCCCACTGGCTGAGAATCTGG
6 SLC7A6 0.4 AAGCCTATACGTTTCTGTGGAGTAA
4 TFDP2 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
3 ADA 0.41 TGCCTGCTCCTGTACTTGTCCTCAG
3 EDG1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
6 ICAM2 0.46 AAGCCTATACGTTTCTGTGGAGTAA
16 PTPN7 0.33 TCCTCCATCACCTGAAACACTGGAC
6 CXorf9 0.35 AAGCCTATACGTTTCTGTGGAGTAA
11 RHOH 0.31 CACCCAGCTGGTCCTGTGGATGGGA
4 MX2 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
16 ZNFN1A1 0.31 TCCTCCATCACCTGAAACACTGGAC
9 COCH 0.33 TGGACCCCACTGGCTGAGAATCTGG
9 LCP2 0.34 TGGACCCCACTGGCTGAGAATCTGG
16 CLGN 0.31 TCCTCCATCACCTGAAACACTGGAC
2 BNC1 0.38 GCCCCACTGGACAACACTGATTCCT
1 FLNC 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
3 HLA-DRB3 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
9 UCP2 0.34 TGGACCCCACTGGCTGAGAATCTGG
2 HLA-DRB1 0.3 GCCCCACTGGACAACACTGATTCCT
24 GATA3 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
4 PRKCQ 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
7 SH2D1A 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
7 NFATC3 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
4 TRB@ 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
16 FNBP1 0.34 TCCTCCATCACCTGAAACACTGGAC
7 SEPT6 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
6 NME4 0.32 AAGCCTATACGTTTCTGTGGAGTAA
24 DKFZP434C171 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
1 ZC3HAV1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
4 SLC43A3 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
4 CD3D 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
16 AIF1 0.35 TCCTCCATCACCTGAAACACTGGAC
16 SPTAN1 0.34 TCCTCCATCACCTGAAACACTGGAC
24 CD1E 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
6 TRIM 0.31 AAGCCTATACGTTTCTGTGGAGTAA
24 DATF1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
1 FHOD1 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
11 ARHGAP15 0.3 CACCCAGCTGGTCCTGTGGATGGGA
6 STAG3 0.34 AAGCCTATACGTTTCTGTGGAGTAA
1 SAP130 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
7 CYLD 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 57
Vinblastine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
7 CD99 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 58
Busulfan biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 RPLP2 0.37 TCCTCCATCACCTGAAACACTGGAC
7 BTG1 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
3 CSDA 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
6 ARHGDIB 0.38 AAGCCTATACGTTTCTGTGGAGTAA
16 INSIG1 0.41 TCCTCCATCACCTGAAACACTGGAC
10 ALDOC 0.36 TTGGACATCTCTAGTGTAGCTGCCA
16 WASPIP 0.31 TCCTCCATCACCTGAAACACTGGAC
1 C1QR1 0.46 TCCTGTACTTGTCCTCAGCTTGGGC
9 EDEM1 0.36 TGGACCCCACTGGCTGAGAATCTGG
24 SLA 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
24 MFNG 0.4 TCCTTGTGCCTGCTCCTGTACTTGT
2 GPSM3 0.75 GCCCCACTGGACAACACTGATTCCT
7 ADA 0.53 ACTTGTCCTCAGCTTGGGCTTCTTC
1 LRMP 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
16 EVI2A 0.52 TCCTCCATCACCTGAAACACTGGAC
7 FMNL1 0.45 ACTTGTCCTCAGCTTGGGCTTCTTC
7 PTPN7 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
7 RHOH 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
6 ZNFN1A1 0.36 AAGCCTATACGTTTCTGTGGAGTAA
10 CENTB1 0.33 TTGGACATCTCTAGTGTAGCTGCCA
9 MAP4K1 0.31 TGGACCCCACTGGCTGAGAATCTGG
1 CD28 0.51 TCCTGTACTTGTCCTCAGCTTGGGC
24 SP110 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
3 NAP1L1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
16 IFI16 0.35 TCCTCCATCACCTGAAACACTGGAC
4 ARHGEF6 0.42 AAATGTTTCCTTGTGCCTGCTCCTG
1 SELPLG 0.45 TCCTGTACTTGTCCTCAGCTTGGGC
11 CD3Z 0.35 CACCCAGCTGGTCCTGTGGATGGGA
11 SH2D1A 0.38 CACCCAGCTGGTCCTGTGGATGGGA
3 LAIR1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
2 RAFTLIN 0.36 GCCCCACTGGACAACACTGATTCCT
7 HA-1 0.61 ACTTGTCCTCAGCTTGGGCTTCTTC
3 DOCK2 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
2 CD3D 0.31 GCCCCACTGGACAACACTGATTCCT
7 T3JAM 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
9 ZAP70 0.36 TGGACCCCACTGGCTGAGAATCTGG
16 GPR65 0.32 TCCTCCATCACCTGAAACACTGGAC
11 CYFIP2 0.58 CACCCAGCTGGTCCTGTGGATGGGA
10 LPXN 0.34 TTGGACATCTCTAGTGTAGCTGCCA
1 RPL10L 0.41 TCCTGTACTTGTCCTCAGCTTGGGC
4 GLTSCR2 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
11 ARHGAP15 0.47 CACCCAGCTGGTCCTGTGGATGGGA
3 BCL11B 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
6 TM6SF1 0.39 AAGCCTATACGTTTCTGTGGAGTAA
7 PACAP 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
9 TCF4 0.32 TGGACCCCACTGGCTGAGAATCTGG
TABLE 59
Dacarbazine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
24 ARHGDIB 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
16 ITM2A 0.4 TCCTCCATCACCTGAAACACTGGAC
11 SSBP2 0.33 CACCCAGCTGGTCCTGTGGATGGGA
2 PIM2 0.39 GCCCCACTGGACAACACTGATTCCT
2 SELL 0.31 GCCCCACTGGACAACACTGATTCCT
1 ICAM2 0.43 TCCTGTACTTGTCCTCAGCTTGGGC
6 EVI2A 0.32 AAGCCTATACGTTTCTGTGGAGTAA
10 MAL 0.32 TTGGACATCTCTAGTGTAGCTGCCA
7 PTPN7 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ZNFN1A1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
2 LCP2 0.3 GCCCCACTGGACAACACTGATTCCT
9 ARHGAP6 0.33 TGGACCCCACTGGCTGAGAATCTGG
7 CD28 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
16 CD8B1 0.32 TCCTCCATCACCTGAAACACTGGAC
24 LCP1 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
3 NPD014 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
6 CD69 0.32 AAGCCTATACGTTTCTGTGGAGTAA
6 NFATC3 0.32 AAGCCTATACGTTTCTGTGGAGTAA
4 TRB@ 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
6 IGJ 0.33 AAGCCTATACGTTTCTGTGGAGTAA
10 SLC43A3 0.3 TTGGACATCTCTAGTGTAGCTGCCA
16 DOCK2 0.36 TCCTCCATCACCTGAAACACTGGAC
9 FHOD1 0.33 TGGACCCCACTGGCTGAGAATCTGG
6 PACAP 0.31 AAGCCTATACGTTTCTGTGGAGTAA
TABLE 60
Oxaliplatin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
10 RPL18 0.38 TTGGACATCTCTAGTGTAGCTGCCA
4 RPL10A 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
9 RPS3A 0.34 TGGACCCCACTGGCTGAGAATCTGG
11 EEF1B2 0.39 CACCCAGCTGGTCCTGTGGATGGGA
6 GOT2 0.32 AAGCCTATACGTTTCTGTGGAGTAA
4 RPL13A 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
2 RPS15 0.41 GCCCCACTGGACAACACTGATTCCT
3 NOL5A 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
3 RPLP2 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
9 SLC9A3R1 0.43 TGGACCCCACTGGCTGAGAATCTGG
2 E1F3S3 0.43 GCCCCACTGGACAACACTGATTCCT
3 MTHFD2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
7 IMPDH2 0.34 ACTTGTCCTCAGCTTGGGCTTCTTC
3 ALDOC 0.44 TGCCTGCTCCTGTACTTGTCCTCAG
11 FABP5 0.33 CACCCAGCTGGTCCTGTGGATGGGA
24 ITM2A 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
7 PCK2 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
2 MFNG 0.33 GCCCCACTGGACAACACTGATTCCT
9 GCH1 0.37 TGGACCCCACTGGCTGAGAATCTGG
11 PIM2 0.39 CACCCAGCTGGTCCTGTGGATGGGA
24 ADA 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
16 ICAM2 0.31 TCCTCCATCACCTGAAACACTGGAC
10 TTF1 0.47 TTGGACATCTCTAGTGTAGCTGCCA
3 MYB 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
11 PTPN7 0.37 CACCCAGCTGGTCCTGTGGATGGGA
16 RHOH 0.42 TCCTCCATCACCTGAAACACTGGAC
7 ZNFN1A1 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
24 PRIM1 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
16 FHIT 0.48 TCCTCCATCACCTGAAACACTGGAC
9 ASS 0.45 TGGACCCCACTGGCTGAGAATCTGG
3 SYK 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
10 OXA1L 0.32 TTGGACATCTCTAGTGTAGCTGCCA
3 LCP1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
6 DDX18 0.32 AAGCCTATACGTTTCTGTGGAGTAA
4 NOLA2 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
16 KIAA0922 0.41 TCCTCCATCACCTGAAACACTGGAC
24 PRKCQ 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
1 NFATC3 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
16 ANAPC5 0.34 TCCTCCATCACCTGAAACACTGGAC
9 TRB@ 0.4 TGGACCCCACTGGCTGAGAATCTGG
24 CXCR4 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
1 FNBP4 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
10 SEPT6 0.53 TTGGACATCTCTAGTGTAGCTGCCA
16 RPS2 0.35 TCCTCCATCACCTGAAACACTGGAC
7 MDN1 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
6 PCCB 0.32 AAGCCTATACGTTTCTGTGGAGTAA
9 RASA4 0.33 TGGACCCCACTGGCTGAGAATCTGG
11 WBSCR20C 0.31 CACCCAGCTGGTCCTGTGGATGGGA
10 SFRS7 0.32 TTGGACATCTCTAGTGTAGCTGCCA
3 WBSCR20A 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
9 NUP210 0.43 TGGACCCCACTGGCTGAGAATCTGG
24 SHMT2 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
10 RPLP0 0.33 TTGGACATCTCTAGTGTAGCTGCCA
11 MAP4K1 0.31 CACCCAGCTGGTCCTGTGGATGGGA
16 HNRPA1 0.37 TCCTCCATCACCTGAAACACTGGAC
2 CYFIP2 0.3 GCCCCACTGGACAACACTGATTCCT
16 RPL10L 0.32 TCGTCCATCACCTGAAACACTGGAC
9 GLTSCR2 0.39 TGGACCCCACTGGCTGAGAATCTGG
1 MRPL16 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
2 MRPS2 0.34 GCCCCACTGGACAACACTGATTCCT
6 FLJ12270 0.31 AAGCCTATACGTTTCTGTGGAGTAA
10 CDK5RAP3 0.32 TTGGACATCTCTAGTGTAGCTGCCA
1 ARHGAP15 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
24 CUTC 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
7 FKBP11 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
6 ADPGK 0.41 AAGCCTATACGTTTCTGTGGAGTAA
2 FLJ22457 0.32 GCCCCACTGGACAACACTGATTCCT
24 PUS3 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
3 PACAP 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
1 CALML4 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 61
Hydroxyurea biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
16 CSDA 0.31 TCCTCCATCACCTGAAACACTGGAC
6 INSIG1 0.38 AAGCCTATACGTTTCTGTGGAGTAA
11 UBE2L6 0.33 CACCCAGCTGGTCCTGTGGATGGGA
2 PRG1 0.36 GCCCCACTGGACAACACTGATTCCT
7 ITM2A 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
11 DGKA 0.31 CACCCAGCTGGTCCTGTGGATGGGA
11 SLA 0.47 CACCCAGCTGGTCCTGTGGATGGGA
9 PCBP2 0.51 TGGACCCCACTGGCTGAGAATCTGG
7 IL2RG 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
6 ALOX5AP 0.31 AAGCCTATACGTTTCTGTGGAGTAA
2 PSMB9 0.33 GCCCCACTGGACAACACTGATTCCT
10 LRMP 0.36 TTGGACATCTCTAGTGTAGCTGCCA
9 ICAM2 0.31 TGGACCCCACTGGCTGAGAATCTGG
16 PTPN7 0.36 TCCTCCATCACCTGAAACACTGGAC
24 CXorf9 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
3 RHOH 0.41 TGCCTGCTCCTGTACTTGTCCTCAG
4 ZNFN1A1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
10 CENTB1 0.36 TTGGACATCTCTAGTGTAGCTGCCA
11 LCP2 0.37 CACCCAGCTGGTCCTGTGGATGGGA
2 STAT4 0.32 GCCCCACTGGACAACACTGATTCCT
24 CCR7 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
4 CD3G 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
1 SP110 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
16 TNFAIP8 0.31 TCCTCCATCACCTGAAACACTGGAC
9 IFI16 0.4 TGGACCCCACTGGCTGAGAATCTGG
7 CXCR4 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
10 ARHGEF6 0.37 TTGGACATCTCTAGTGTAGCTGCCA
16 SELPLG 0.3 TCCTCCATCACCTGAAACACTGGAC
16 CD3Z 0.38 TCCTCCATCACCTGAAACACTGGAC
3 PRKCQ 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
24 SH2D1A 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 CD1A 0.31 TTGGACATCTCTAGTGTAGCTGCCA
9 NFATC3 0.33 TGGACCCCACTGGCTGAGAATCTGG
16 LAIR1 0.34 TCCTCCATCACCTGAAACACTGGAC
11 TRB@ 0.3 CACCCAGCTGGTCCTGTGGATGGGA
11 SEPT6 0.34 CAGCCAGCTGGTCCTGTGGATGGGA
24 RAFTLIN 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
9 DOCK2 0.32 TGGACCCCACTGGCTGAGAATCTGG
3 CD3D 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
6 CD6 0.42 AAGCCTATACGTTTCTGTGGAGTAA
3 AIF1 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
2 CD1E 0.41 GCCCCACTGGACAACACTGATTCCT
1 CYFIP2 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
4 TARP 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
6 ADA 0.33 AAGCCTATACGTTTCTGTGGAGTAA
9 ARHGAP15 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 GIMAP6 0.34 GCCCCACTGGACAACACTGATTCCT
7 STAG3 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
6 FLJ22457 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 PACAP 0.35 AAGCCTATACGTTTCTGTGGAGTAA
1 TCF4 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 62
Tegafur biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 RPL11 0.31 GCCCCACTGGACAACACTGATTCCT
3 RPL17 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
11 ANAPC5 0.34 CACCCAGCTGGTCCTGTGGATGGGA
1 RPL13A 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
16 STOM 0.37 TCCTCCATCACCTGAAACACTGGAC
2 TUFM 0.38 GCCCCACTGGACAACACTGATTCCT
1 SCARB1 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
11 FABP5 0.33 CACCCAGCTGGTCCTGTGGATGGGA
24 KIAA0711 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
16 ILGR 0.33 TCCTCCATCACCTGAAACACTGGAC
4 WBSCR22 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
3 UCK2 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
6 GZMB 0.3 AAGCCTATACGTTTCTGTGGAGTAA
11 Clorf38 0.32 CACCCAGCTGGTCCTGTGGATGGGA
1 PCBP2 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
3 GPR65 0.44 TGCCTGCTCCTGTACTTGTCCTCAG
24 GLTSCR2 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
9 FKBP11 0.38 TGGACCCCACTGGCTGAGAATCTGG
TABLE 63
Daunorubicin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 ALDOC 0.41 TGCCTGCTCCTGTACTTGTCCTCAG
2 ITM2A 0.32 GCCCCACTGGACAACACTGATTCCT
24 SLA 0.41 TCCTTGTGCCTGCTCCTGTACTTGT
24 SSBP2 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
9 IL2RG 0.31 TGGACCCCACTGGCTGAGAATCTGG
10 MFNG 0.47 TTGGACATCTCTAGTGTAGCTGCCA
16 SELL 0.33 TCCTCCATCACCTGAAACACTGGAC
4 STC1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
6 LRMP 0.33 AAGCCTATACGTTTCTGTGGAGTAA
2 MYB 0.41 GCCCCACTGGACAACACTGATTCCT
4 PTPN7 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
9 CXorf9 0.38 TGGACCCCACTGGCTGAGAATCTGG
4 RHOH 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
11 ZNFN1A1 0.36 CACCCAGCTGGTCCTGTGGATGGGA
9 CENTB1 0.37 TGGACCCCACTGGCTGAGAATCTGG
9 MAP4K1 0.32 TGGACCCCACTGGCTGAGAATCTGG
1 CCR7 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
4 CD3G 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
9 CCR9 0.33 TGGACCCCACTGGCTGAGAATCTGG
11 CBFA2T3 0.31 CACCCAGCTGGTCCTGTGGATGGGA
4 CXGR4 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
1 ARHGEF6 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
24 SELPLG 0.45 TCCTTGTGCCTGCTCCTGTACTTGT
1 SEC31L2 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
11 CD3Z 0.33 CACCCAGCTGGTCCTGTGGATGGGA
1 SH2D1A 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
9 CD1A 0.35 TGGACCCCACTGGCTGAGAATCTGG
11 SCN3A 0.33 CACCCAGCTGGTCCTGTGGATGGGA
3 LAIR1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
4 TRB@ 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
6 DOCK2 0.35 AAGCCTATACGTTTCTGTGGAGTAA
11 WBSCR20C 0.38 CACCCAGCTGGTCCTGTGGATGGGA
3 CD3D 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
11 T3JAM 0.34 CACCCAGCTGGTCCTGTGGATGGGA
7 CD6 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
3 ZAP70 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
1 GPR65 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
2 AIF1 0.3 GCCCCACTGGACAACACTGATTCCT
16 WDR45 0.3 TCCTCCATCACCTGAAACACTGGAC
24 CD1E 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
6 CYFIP2 0.39 AAGCCTATACGTTTCTGTGGAGTAA
10 TARP 0.38 TTGGACATCTCTAGTGTAGCTGCCA
1 TRIM 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
7 ARHGAP15 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
6 NOTCH1 0.39 AAGCCTATACGTTTCTGTGGAGTAA
6 STAG3 0.35 AAGCCTATACGTTTCTGTGGAGTAA
3 UBASH3A 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
3 MGC5566 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
24 PACAP 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 64
Bleomycin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
11 PFN1 0.32 CACCCAGCTGGTCCTGTGGATGGGA
7 CALU 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
11 ZYX 0.34 CACCCAGCTGGTCCTGTGGATGGGA
2 PSMD2 0.36 GCCCCACTGGACAACACTGATTCCT
1 RAP1B 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
1 EPAS1 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
2 PGAM1 0.36 GCCCCACTGGACAACACTGATTCCT
3 STAT1 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
2 CKAP4 0.38 GCCCCACTGGACAACACTGATTCCT
1 DUSP1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
16 RCN1 0.32 TCCTCCATCACCTGAAACACTGGAC
9 UCHL1 0.44 TGGACCCCACTGGCTGAGAATCTGG
4 ITGA5 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
3 NFKBIA 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
2 LAMB1 0.4 GCCCCACTGGACAACACTGATTCCT
10 TGFBI 0.37 TTGGACATCTCTAGTGTAGCTGCCA
2 FHL1 0.31 GCCCCACTGGACAACACTGATTCCT
16 GJA1 0.32 TCCTCCATCACCTGAAACACTGGAC
11 PRG1 0.33 CACCCAGCTGGTCCTGTGGATGGGA
11 EXT1 0.35 CACCCAGCTGGTCCTGTGGATGGGA
1 MVP 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
9 NNMT 0.38 TGGACCCCACTGGCTGAGAATCTGG
16 TAP1 0.37 TCCTCCATCACCTGAAACACTGGAC
9 CRIM1 0.41 TGGACCCCACTGGCTGAGAATCTGG
2 PLOD2 0.36 GCCCCACTGGACAACACTGATTCCT
1 RPS19 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
2 AXL 0.43 GCCCCACTGGACAACACTGATTCCT
16 PALM2-AKAP2 0.42 TCCTCCATCACCTGAAACACTGGAC
1 IL8 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
3 LOXL2 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
11 PAPSS2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
24 CAV1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
7 F2R 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
11 PSMB9 0.38 CACCCAGCTGGTCCTGTGGATGGGA
9 LOX 0.36 TGGACCCCACTGGCTGAGAATCTGG
1 Clorf29 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
10 STC1 0.32 TTGGACATCTCTAGTGTAGCTGCCA
24 LIF 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
2 KCNJ8 0.46 GCCCCACTGGACAACACTGATTCCT
3 SMAD3 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
4 HPCAL1 0.45 AAATGTTTCCTTGTGCCTGCTCCTG
24 WNT5A 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
3 BDNF 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
1 TNFRSF1A 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
11 NCOR2 0.45 CACCCAGCTGGTCCTGTGGATGGGA
10 FLNC 0.44 TTGGACATCTCTAGTGTAGCTGCCA
4 HMGA2 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
6 HLA-B 0.42 AAGCCTATACGTTTCTGTGGAGTAA
4 FLOT1 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
11 PTRF 0.36 CACCCAGCTGGTCCTGTGGATGGGA
24 IFI16 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
16 MGC4083 0.34 TCCTCCATCACCTGAAACACTGGAC
7 TNFRSF10B 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
1 PNMA2 0.38 TCCTGTACTTGTCCTCAGCTTGGGC
24 TFPI 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
3 CLECSF2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
2 SP110 0.34 GCCCCACTGGACAACACTGATTCCT
7 PLAUR 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ASPH 0.42 TCCTTGTGCCTGCTCCTGTACTTGT
3 FSCN1 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
16 HIC 0.46 TCCTCCATCACCTGAAACACTGGAC
9 HLA-C 0.34 TGGACCCCACTGGCTGAGAATCTGG
16 COL6A1 0.34 TCCTCCATCACCTGAAACACTGGAC
4 IL6ST 0.45 AAATGTTTCCTTGTGCCTGCTCCTG
2 IFITM3 0.36 GCCCCACTGGACAACACTGATTCCT
16 MAP1B 0.31 TCCTCCATCACCTGAAACACTGGAC
7 FLJ46603 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
2 RAFTLIN 0.32 GCCCCACTGGACAACACTGATTCCT
11 FTL 0.37 CACCCAGCTGGTCCTGTGGATGGGA
16 KIAA0877 0.43 TCCTCCATCACCTGAAACACTGGAC
9 MT1E 0.41 TGGACCCCACTGGCTGAGAATCTGG
3 CDC10 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
4 ZNF258 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
10 BCAT1 0.39 TTGGACATCTCTAGTGTAGCTGCCA
4 IFI44 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
2 SOD2 0.36 GCCCCACTGGACAACACTGATTCCT
16 TMSB10 0.33 TCCTCCATCACCTGAAACACTGGAC
10 FLJ10350 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 Clorf24 0.34 CACCCAGCTGGTCCTGTGGATGGGA
4 EFHD2 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
6 RPS27L 0.33 AAGCCTATACGTTTCTGTGGAGTAA
11 TNFRSF12A 0.43 CACCCAGCTGGTCCTGTGGATGGGA
10 FAD104 0.38 TTGGACATCTCTAGTGTAGCTGCCA
7 RAB7L1 0.58 ACTTGTCCTCAGCTTGGGCTTCTTC
10 NME7 0.36 TTGGACATCTCTAGTGTAGCTGCCA
10 TMEM22 0.34 TTGGACATCTCTAGTGTAGCTGCCA
2 TPK1 0.31 GCCCCACTGGACAACACTGATTCCT
9 ELK3 0.36 TGGACCCCACTGGCTGAGAATCTGG
6 CYLD 0.3 AAGCCTATACGTTTCTGTGGAGTAA
7 AMIGO2 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
7 ADAMTS1 0.43 ACTTGTCCTCAGCTTGGGCTTCTTC
7 ACTB 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 65
Estramustine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
7 HSPCB 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
3 LDHA 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
1 TM4SF7 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 66
Chlorambucil biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
9 CSDA 0.33 TGGACCCCACTGGCTGAGAATCTGG
24 INSIG1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
9 UBE2L6 0.39 TGGACCCCACTGGCTGAGAATCTGG
24 PRG1 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
2 ITM2A 0.3 GCCCCACTGGACAACACTGATTCCT
24 DGKA 0.38 TCCTTGTGCCTGCTCCTGTACTTGT
4 TFDP2 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
16 SLA 0.32 TCCTCCATCACCTGAAACACTGGAC
6 IL2RG 0.44 AAGCCTATACGTTTCTGTGGAGTAA
2 ALOX5AP 0.45 GCCCCACTGGACAACACTGATTCCT
10 GPSM3 0.34 TTGGACATCTCTAGTGTAGCTGCCA
7 PSMB9 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
3 SELL 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
7 ADA 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
4 EDG1 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
16 FMNL1 0.3 TCCTCCATCACCTGAAACACTGGAC
24 PTPN7 0.5 TCCTTGTGCCTGCTCCTGTACTTGT
9 CXorf9 0.41 TGGACCCCACTGGCTGAGAATCTGG
10 RHOH 0.35 TTGGACATCTCTAGTGTAGCTGCCA
24 ZNFN1A1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
1 CENTB1 0.47 TCCTGTACTTGTCCTCAGCTTGGGC
16 LCP2 0.37 TCCTCCATCACCTGAAACACTGGAC
6 CD1D 0.36 AAGCCTATACGTTTCTGTGGAGTAA
4 STAT4 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
4 VAV1 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
10 MAP4K1 0.36 TTGGACATCTCTAGTGTAGCTGCCA
1 CCR7 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 PDE4C 0.42 GCCCCACTGGACAACACTGATTCCT
6 CD3G 0.41 AAGCCTATACGTTTCTGTGGAGTAA
6 CCR9 0.43 AAGCCTATACGTTTCTGTGGAGTAA
10 SP110 0.43 TTGGACATCTCTAGTGTAGCTGCCA
10 TNFAIP8 0.48 TTGGACATCTCTAGTGTAGCTGCCA
4 LCP1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
16 IFI16 0.5 TCCTCCATCACCTGAAACACTGGAC
7 CXCR4 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
7 ARHGEF6 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
10 SELPLG 0.43 TTGGACATCTCTAGTGTAGCTGCCA
9 SEC31L2 0.32 TGGACCCCACTGGCTGAGAATCTGG
6 CD3Z 0.3 AAGCCTATACGTTTCTGTGGAGTAA
2 PRKCQ 0.31 GGCCCACTGGACAACACTGATTCCT
7 SH2D1A 0.47 ACTTGTCCTCAGCTTGGGCTTCTTC
9 GZMB 0.48 TGGACCCCACTGGCTGAGAATCTGG
6 CD1A 0.3 AAGCCTATACGTTTCTGTGGAGTAA
10 LAIR1 0.32 TTGGACATCTCTAGTGTAGCTGCCA
10 AF1Q 0.41 TTGGACATCTCTAGTGTAGCTGCCA
16 TRB@ 0.35 TCCTCCATCACCTGAAACACTGGAC
9 SEPT6 0.35 TGGACCCCACTGGCTGAGAATCTGG
6 DOCK2 0.39 AAGCCTATACGTTTCTGTGGAGTAA
10 RPS19 0.41 TTGGACATCTCTAGTGTAGCTGCCA
10 CD3D 0.4 TTGGACATCTCTAGTGTAGCTGCCA
9 T3JAM 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 FNBP1 0.31 GCCCCACTGGACAACACTGATTCCT
9 CD6 0.33 TGGACCCCACTGGCTGAGAATCTGG
11 ZAP70 0.52 CACCCAGCTGGTCCTGTGGATGGGA
4 LST1 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
6 BCAT1 0.35 AAGCCTATACGTTTCTGTGGAGTAA
6 PRF1 0.4 AAGCCTATACGTTTCTGTGGAGTAA
10 AIF1 0.3 TTGGACATCTCTAGTGTAGCTGCCA
9 RAG2 0.38 TGGACCCCACTGGCTGAGAATCTGG
7 CD1E 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
10 CYFIP2 0.38 TTGGACATCTCTAGTGTAGCTGCCA
9 TARP 0.3 TGGACCCCACTGGCTGAGAATCTGG
11 TRIM 0.36 CACCCAGCTGGTCCTGTGGATGGGA
16 GLTSCR2 0.37 TCCTCCATCACCTGAAACACTGGAC
7 GIMAP5 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
6 ARHGAP15 0.32 AAGCCTATACGTTTCTGTGGAGTAA
11 NOTCH1 0.31 CACCCAGCTGGTCCTGTGGATGGGA
24 BCL11B 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
10 GIMAP6 0.34 TTGGACATCTCTAGTGTAGCTGCCA
1 STAG3 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
10 TM6SF1 0.39 TTGGACATCTCTAGTGTAGCTGCCA
1 UBASH3A 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
11 MGC5566 0.36 CACCCAGCTGGTCCTGTGGATGGGA
16 FLJ22457 0.31 TCCTCCATCACCTGAAACACTGGAC
4 TPK1 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
TABLE 67
Mechlorethamine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 PRG1 0.37 GCCCCACTGGACAACACTGATTCCT
7 SLC2A3 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
7 RPS19 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 PSMB10 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
3 ITM2A 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
3 DGKA 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
16 SEMA4D 0.34 TCCTCCATCACCTGAAACACTGGAC
3 SLA 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
9 IL2RG 0.3 TGGACCCCACTGGCTGAGAATCTGG
6 MFNG 0.42 AAGCCTATACGTTTCTGTGGAGTAA
6 ALOX5AP 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 GPSM3 0.34 AAGCCTATACGTTTCTGTGGAGTAA
7 PSMB9 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
11 SELL 0.34 CACCCAGCTGGTCCTGTGGATGGGA
4 ADA 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
11 FMNL1 0.4 CACCCAGCTGGTCCTGTGGATGGGA
9 MYB 0.34 TGGACCCCACTGGCTGAGAATCTGG
6 PTPN7 0.43 AAGCCTATACGTTTCTGTGGAGTAA
3 CXorf9 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 RHOH 0.33 TTGGACATCTCTAGTGTAGCTGCCA
16 ZNFN1A1 0.31 TCCTCCATCACCTGAAACACTGGAC
16 CENTB1 0.43 TCCTCCATCACCTGAAACACTGGAC
10 FXYD2 0.35 TTGGACATCTCTAGTGTAGCTGCCA
10 CD1D 0.4 TTGGACATCTCTAGTGTAGCTGCCA
10 STAT4 0.44 TTGGACATCTCTAGTGTAGCTGCCA
2 MAP4K1 0.34 GCCCCACTGGACAACACTGATTCCT
9 CCR7 0.39 TGGACCCCACTGGCTGAGAATCTGG
24 PDE4C 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
2 CD3G 0.4 GCCCCACTGGACAACACTGATTCCT
9 CCR9 0.34 TGGACCCCACTGGCTGAGAATCTGG
4 SP110 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
1 TK2 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
2 TNFAIP8 0.34 GCCCCACTGGACAACACTGATTCCT
1 NAP1L1 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
1 SELPLG 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
3 SEC31L2 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
10 CD3Z 0.44 TTGGACATCTCTAGTGTAGCTGCCA
1 PRKCQ 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
2 SH2D1A 0.41 GCCCCACTGGACAACACTGATTCCT
9 GZMB 0.43 TGGACCCCACTGGCTGAGAATCTGG
9 CD1A 0.39 TGGACCCCACTGGCTGAGAATCTGG
9 LAIR1 0.35 TGGACCCCACTGGCTGAGAATCTGG
10 TRB@ 0.33 TTGGACATCTCTAGTGTAGCTGCCA
11 SEPT6 0.3 CACCCAGCTGGTCCTGTGGATGGGA
9 DOCK2 0.34 TGGACCCCACTGGCTGAGAATCTGG
9 CG018 0.33 TGGACCCCACTGGCTGAGAATCTGG
1 WBSCR20C 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
7 CD3D 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
6 CD6 0.32 AAGCCTATACGTTTCTGTGGAGTAA
10 LST1 0.33 TTGGACATCTCTAGTGTAGCTGCCA
6 GPR65 0.42 AAGCCTATACGTTTCTGTGGAGTAA
11 PRF1 0.34 CACCCAGCTGGTCCTGTGGATGGGA
1 ALMS1 0.41 TCCTGTACTTGTCCTCAGCTTGGGC
2 AIF1 0.31 GCCCCACTGGACAACACTGATTCCT
11 CD1E 0.31 CACCCAGCTGGTCCTGTGGATGGGA
2 CYFIP2 0.33 GCCCCACTGGACAACACTGATTCCT
4 TARP 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
6 GLTSCR2 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 FLJ12270 0.34 TGGACCCCACTGGCTGAGAATCTGG
2 ARHGAP15 0.33 GCCCCACTGGACAACACTGATTCCT
2 NAP1L2 0.32 GCCCCACTGGACAACACTGATTCCT
24 CECR1 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
1 GIMAP6 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
11 STAG3 0.33 CACCCAGCTGGTCCTGTGGATGGGA
11 TM6SF1 0.3 CACCCAGCTGGTCCTGTGGATGGGA
10 C15orf25 0.36 TTGGACATCTCTAGTGTAGCTGCCA
1 MGC5566 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
4 FLJ22457 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
11 ET 0.32 CACCCAGCTGGTCCTGTGGATGGGA
11 TPK1 0.34 CACCCAGCTGGTCCTGTGGATGGGA
10 PHF11 0.36 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 68
Streptozocin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 PGK1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
9 SCD 0.31 TGGACCCCACTGGCTGAGAATCTGG
3 INSIG1 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
16 IGBP1 0.39 TCCTCCATCACCTGAAACACTGGAC
16 TNFAIP3 0.31 TCCTCCATCACCTGAAACACTGGAC
11 TNFSF10 0.31 CACCCAGCTGGTCCTGTGGATGGGA
3 ABCA1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
9 AGA 0.31 TGGACCCCACTGGCTGAGAATCTGG
11 ABCA8 0.31 CACCCAGCTGGTCCTGTGGATGGGA
3 DBC1 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 PTGER2 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
16 UGT1A3 0.32 TCCTCCATCACCTGAAACACTGGAC
11 C10orf10 0.3 CACCCAGCTGGTCCTGTGGATGGGA
9 TM4SF13 0.34 TGGACCCCACTGGCTGAGAATCTGG
24 CGI-90 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
6 LXN 0.31 AAGCCTATACGTTTCTGTGGAGTAA
10 DNAJC12 0.35 TTGGACATCTCTAGTGTAGCTGCCA
11 HIPK2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
7 C9orf95 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 69
Carmustine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 RPLP2 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD99 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 IFITM1 0.36 TCCTCCATCACCTGAAACACTGGAC
16 INSIG1 0.31 TCCTCCATCACCTGAAACACTGGAC
3 ALDOC 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
24 ITM2A 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
10 SERPINA1 0.39 TTGGACATCTCTAGTGTAGCTGCCA
6 C1QR1 0.35 AAGCCTATACGTTTCTGTGGAGTAA
10 STAT5A 0.39 TTGGACATCTCTAGTGTAGCTGCCA
24 INPP5D 0.44 TCCTTGTGCCTGCTCCTGTACTTGT
4 SATB1 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
4 VPS16 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
1 SLA 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
16 IL2RG 0.45 TCCTCCATCACCTGAAACACTGGAC
16 MFNG 0.33 TCCTCCATCACCTGAAACACTGGAC
6 SELL 0.38 AAGCCTATACGTTTCTGTGGAGTAA
2 LRMP 0.41 GCCCCACTGGACAACACTGATTCCT
16 ICAM2 0.54 TCCTCCATCACCTGAAACACTGGAC
7 MYB 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
3 PTPN7 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
10 ARHGAP25 0.42 TTGGACATCTCTAGTGTAGCTGCCA
9 LCK 0.41 TGGACCCCACTGGCTGAGAATCTGG
9 CXorf9 0.35 TGGACCCCACTGGCTGAGAATCTGG
4 RHOH 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
3 ZNFN1A1 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
7 CENTB1 0.59 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ADD2 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
10 LCP2 0.33 TTGGACATCTCTAGTGTAGCTGCCA
3 SFI1 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
7 DBT 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
11 GZMA 0.34 CACCCAGCTGGTCCTGTGGATGGGA
9 CD2 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 BATF 0.38 ACTTGTCCTCAGCTTGGGCTTCTTC
1 HIST1H4C 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
16 ARHGAP6 0.4 TCCTCCATCACCTGAAACACTGGAC
9 VAV1 0.42 TGGACCCCACTGGCTGAGAATCTGG
24 MAP4K1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
24 CCR7 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
16 PDE4C 0.57 TCCTCCATCACCTGAAACACTGGAC
6 CD3G 0.44 AAGCCTATACGTTTCTGTGGAGTAA
4 CCR9 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
1 SP140 0.48 TCCTGTACTTGTCCTCAGCTTGGGC
9 TK2 0.31 TGGACCCCACTGGCTGAGAATCTGG
16 LCP1 0.38 TCCTCCATCACCTGAAACACTGGAC
2 IFI16 0.34 GCCCCACTGGACAACACTGATTCCT
2 CXCR4 0.42 GCCCCACTGGACAACACTGATTCCT
4 ARHGEF6 0.45 AAATGTTTCCTTGTGCCTGCTCCTG
1 PSCDBP 0.42 TCCTGTACTTGTCCTCAGCTTGGGC
9 SELPLG 0.52 TGGACCCCACTGGCTGAGAATCTGG
1 SEC31L2 0.42 TCCTGTACTTGTCCTCAGCTTGGGC
16 CD3Z 0.34 TCCTCCATCACCTGAAACACTGGAC
24 PRKCQ 0.46 TCCTTGTGCCTGCTCCTGTACTTGT
3 SH2D1A 0.46 TGCCTGCTCCTGTACTTGTCCTCAG
10 GZMB 0.55 TTGGACATCTCTAGTGTAGCTGCCA
24 CD1A 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
10 GATA2 0.41 TTGGACATCTCTAGTGTAGCTGCCA
16 LY9 0.54 TCCTCCATCACCTGAAACACTGGAC
10 LAIR1 0.3 TTGGACATGTCTAGTGTAGCTGCCA
16 TRB@ 0.33 TCCTCCATCACCTGAAACACTGGAC
7 SEPT6 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
16 HA-1 0.32 TCCTCCATCACCTGAAACACTGGAC
1 SLC43A3 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
16 DOCK2 0.31 TCCTCCATCACCTGAAACACTGGAC
7 CG018 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
3 MLC1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
1 CD3D 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
11 T3JAM 0.34 CACCCAGCTGGTCCTGTGGATGGGA
1 CD6 0.43 TCCTGTACTTGTCCTCAGCTTGGGC
2 ZAP70 0.43 GCCCCACTGGACAACACTGATTCCT
1 DOK2 0.3 TCCTGTACTTGTCCTCAGCTTGGGC
1 LST1 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
1 GPR65 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
24 PRF1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
10 ALMS1 0.38 TTGGACATCTCTAGTGTAGCTGCCA
24 AIF1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
2 PRDX2 0.48 GCCCCACTGGACAACACTGATTCCT
4 FLJ12151 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
3 FBXW12 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
6 CD1E 0.34 AAGCCTATACGTTTCTGTGGAGTAA
24 CYFIP2 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
1 TARP 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
11 TRIM 0.38 CACCCAGCTGGTCCTGTGGATGGGA
4 RPL10L 0.43 AAATGTTTCCTTGTGCCTGCTCCTG
11 GLTSCR2 0.43 CACCCAGCTGGTCCTGTGGATGGGA
24 CKIP-1 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
24 NRN1 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
16 ARHGAP15 0.4 TCCTCCATCACCTGAAACACTGGAC
3 NOTCH1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
11 PSCD4 0.4 CACCCAGCTGGTCCTGTGGATGGGA
6 C13orf18 0.31 AAGCCTATACGTTTCTGTGGAGTAA
7 BCL11B 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
7 GIMAP6 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
1 STAG3 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 NARF 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
16 TM6SF1 0.48 TCCTCCATCACCTGAAACACTGGAC
1 C15orf25 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
2 FLJ11795 0.35 GCCCCACTGGACAACACTGATTCCT
2 SAMSN1 0.37 GCCCCACTGGACAACACTGATTCCT
1 UBASH3A 0.4 TCCTGTACTTGTCCTCAGCTTGGGC
3 PACAP 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
11 LEF1 0.3 CACCCAGCTGGTCCTGTGGATGGGA
6 IL21R 0.34 AAGCCTATACGTTTCTGTGGAGTAA
2 TCF4 0.41 GCCCCACTGGACAACACTGATTCCT
1 DKFZP434B0335 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 70
Lomustine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
1 RPS15 0.43 TCCTGTACTTGTCCTCAGCTTGGGC
9 INSIG1 0.31 TGGACCCCACTGGCTGAGAATCTGG
3 ALDOC 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
16 ITM2A 0.32 TCCTCCATCACCTGAAACACTGGAC
3 C1QR1 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
3 STAT5A 0.37 TGCCTGCTCCTGTACTTGTCCTCAG
1 INPP5D 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
3 VPS16 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
3 SLA 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
7 USP20 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
1 IL2RG 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
7 MFNG 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
2 LRMP 0.43 GCCCCACTGGACAACACTGATTCCT
7 EVI2A 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
24 PTPN7 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
1 ARHGAP25 0.39 TCCTGTACTTGTCCTCAGCTTGGGC
6 RHOH 0.31 AAGCCTATACGTTTCTGTGGAGTAA
1 ZNFN1A1 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 CENTB1 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
9 LCP2 0.41 TGGACCCCACTGGCTGAGAATCTGG
3 SPI1 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
10 ARHGAP6 0.33 TTGGACATCTCTAGTGTAGCTGCCA
11 MAP4K1 0.34 CACCCAGCTGGTCCTGTGGATGGGA
16 CCR7 0.35 TCCTCCATCACCTGAAACACTGGAC
2 LY96 0.35 GCCCCACTGGACAACACTGATTCCT
7 C6orf32 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
4 MAGEA1 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
10 SP140 0.35 TTGGACATCTCTAGTGTAGCTGCCA
16 LCP1 0.36 TCCTCCATCACCTGAAACACTGGAC
3 IFI16 0.39 TGCCTGCTCCTGTACTTGTCCTCAG
16 ARHGEF6 0.33 TCCTCCATCACCTGAAACACTGGAC
6 PSCDBP 0.43 AAGCCTATACGTTTCTGTGGAGTAA
7 SELPLG 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
6 CD3Z 0.35 AAGCCTATACGTTTCTGTGGAGTAA
2 PRKCQ 0.4 TCCTTGTGCCTGCTCCTGTACTTGT
6 GZMB 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 LAIR1 0.38 TGGACCCCACTGGCTGAGAATCTGG
1 SH2D1A 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
10 TRB@ 0.39 TTGGACATCTCTAGTGTAGCTGCCA
3 RFP 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
16 SEPT6 0.41 TCCTCCATCACCTGAAACACTGGAC
1 HA-1 0.43 TCCTGTACTTGTCCTCAGCTTGGGC
7 SLC43A3 0.4 ACTTGTCCTCAGCTTGGGCTTCTTC
24 CD3D 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
9 T3JAM 0.3 TGGACCCCACTGGCTGAGAATCTGG
2 GPR65 0.34 GCCCCACTGGACAACACTGATTCCT
3 PRF1 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
9 AIF1 0.33 TGGACCCCACTGGCTGAGAATCTGG
4 LPXN 0.38 AAATGTTTCCTTGTGCCTGCTCCTG
9 RPL10L 0.3 TGGACCCCACTGGCTGAGAATCTGG
11 SITPEC 0.36 CACCCAGCTGGTCCTGTGGATGGGA
9 ARHGAP15 0.33 TGGACCCCACTGGCTGAGAATCTGG
1 C13orf18 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
9 NARF 0.35 TGGACCCCACTGGCTGAGAATCTGG
24 TM6SF1 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
6 PACAP 0.31 AAGCCTATACGTTTCTGTGGAGTAA
24 TCF4 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 71
Mercaptopurine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 SSRP1 0.31 GCCCCACTGGACAACACTGATTCCT
4 ALDOC 0.36 AAATGTTTCCTTGTGCCTGCTCCTG
3 C1QRl 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
1 TTF1 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
2 PRIM1 0.31 GCCCCACTGGACAACACTGATTCCT
16 USP34 0.38 TCCTCCATCACCTGAAACACTGGAC
1 TK2 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
3 GOLGIN-67 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 N2D014 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
16 KIAA0220 0.31 TCCTCCATCACCTGAAACACTGGAC
10 SLC43A3 0.3 TTGGACATCTCTAGTGTAGCTGCCA
11 WBSCR20C 0.3 CACCCAGCTGGTCCTGTGGATGGGA
3 ICAM2 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
9 TEX10 0.32 TGGACCCCACTGGCTGAGAATCTGG
7 CHD7 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
10 SAMSN1 0.34 TTGGACATCTCTAGTGTAGCTGCCA
7 TPRT 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
TABLE 72
Teniposide biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 CD99 0.35 TGCCTGCTCCTGTACTTGTCCTCAG
6 INSIG1 0.35 AAGCCTATACGTTTCTGTGGAGTAA
3 PRG1 0.36 TGCCTGCTCCTGTACTTGTCCTCAG
7 ALDOC 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
6 ITM2A 0.33 AAGCCTATACGTTTCTGTGGAGTAA
2 SLA 0.43 GCCCCACTGGACAACACTGATTCCT
24 SSBP2 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
4 IL2RG 0.37 AAATGTTTCCTTGTGCCTGCTCCTG
10 MFNG 0.32 TTGGACATCTCTAGTGTAGCTGCCA
16 ALOX5AP 0.32 TCCTCCATCACCTGAAACACTGGAC
16 C1orf29 0.3 TCCTCCATCACCTGAAACACTGGAC
11 SELL 0.33 CACCCAGCTGGTCCTGTGGATGGGA
9 STC1 0.47 TGGACCCCACTGGCTGAGAATCTGG
16 LRMP 0.33 TCCTCCATCACCTGAAACACTGGAC
3 MYB 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
6 PTPN7 0.34 AAGCCTATACGTTTCTGTGGAGTAA
10 CXorf9 0.42 TTGGACATCTCTAGTGTAGCTGCCA
6 RHOH 0.31 AAGCCTATACGTTTCTGTGGAGTAA
11 ZNFN1A1 0.34 CACCCAGCTGGTCCTGTGGATGGGA
9 CENTB1 0.37 TGGACCCCACTGGCTGAGAATCTGG
3 ADD2 0.31 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD1D 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
1 BATF 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
2 MAP4K1 0.3 GCCCCACTGGACAACACTGATTCCT
1 CCR7 0.48 TCCTGTACTTGTCCTCAGCTTGGGC
9 PDE4C 0.33 TGGACCCCACTGGCTGAGAATCTGG
10 CD3G 0.33 TTGGACATCTCTAGTGTAGCTGCCA
7 CCR9 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
4 SP110 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
7 TNFAIP8 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
6 NAP1L1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
7 CXCR4 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
1 ARHGEF6 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 GATA3 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
6 SELPLG 0.38 AAGCCTATACGTTTCTGTGGAGTAA
9 SEC31L2 0.46 TGGACCCCACTGGCTGAGAATCTGG
2 CD3Z 0.35 GCCCCACTGGACAACACTGATTCCT
4 SH2D1A 0.45 AAATGTTTCCTTGTGCCTGCTCCTG
24 GZMB 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
2 CD1A 0.45 GCCCCACTGGACAACACTGATTCCT
24 SCN3A 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
24 LAIR1 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
16 AF1Q 0.3 TCCTCCATCACCTGAAACACTGGAC
6 TRB@ 0.32 AAGCCTATACGTTTCTGTGGAGTAA
1 DOCK2 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
16 MLC1 0.31 TCCTCCATCACCTGAAACACTGGAC
9 CD3D 0.31 TGGACCCCACTGGCTGAGAATCTGG
7 T3JAM 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
3 CD6 0.38 TGCCTGCTCCTGTACTTGTCCTCAG
16 ZAP70 0.34 TCCTCCATCACCTGAAACACTGGAC
24 IFI44 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
1 GPR65 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
16 PRF1 0.34 TCCTCCATCACCTGAAACACTGGAC
7 AIF1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
2 WDR45 0.41 GCCCCACTGGACAACACTGATTCCT
6 CD1E 0.31 AAGCCTATACGTTTCTGTGGAGTAA
9 CYFIP2 0.32 TGGACCCCACTGGCTGAGAATCTGG
11 TARP 0.42 CACCCAGCTGGTCCTGTGGATGGGA
9 TRIM 0.33 TGGACCCCACTGGCTGAGAATCTGG
6 ARHGAP15 0.38 AAGCCTATACGTTTCTGTGGAGTAA
3 NOTCH1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
2 STAG3 0.32 GCCCCACTGGACAACACTGATTCCT
6 NARF 0.31 AAGCCTATACGTTTCTGTGGAGTAA
2 TM6SF1 0.33 GCCCCACTGGACAACACTGATTCCT
1 UBASH3A 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
7 MGC5566 0.31 AGTTGTCCTCAGCTTGGGCTTCTTC
TABLE 73
Dactinomycin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
2 ALDOC 0.37 GCCCCACTGGACAACACTGATTCCT
9 C1QR1 0.36 TGGACCCCACTGGCTGAGAATCTGG
1 SLA 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
6 WBSCR20A 0.31 AAGCCTATACGTTTCTGTGGAGTAA
7 MFNG 0.3 ACTTGTCCTCAGCTTGGGCTTCTTC
2 SELL 0.3 GCCCCACTGGACAACACTGATTCCT
10 MYB 0.36 TTGGACATCTCTAGTGTAGCTGCCA
24 RHOH 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
4 ZNFN1A1 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
11 LCP2 0.3 CACCCAGCTGGTCCTGTGGATGGGA
6 MAP4K1 0.34 AAGCCTATACGTTTCTGTGGAGTAA
24 CBFA2T3 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
2 LCP1 0.32 GCCCCACTGGACAACACTGATTCCT
7 SELPLG 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
2 CD3Z 0.35 GCCCCACTGGACAACACTGATTCCT
9 LAIR1 0.33 TGGACCCCACTGGCTGAGAATCTGG
6 WBSCR20C 0.3 AAGCCTATACGTTTCTGTGGAGTAA
11 CD3D 0.35 CACCCAGCTGGTCCTGTGGATGGGA
4 GPR65 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
16 ARHGAP15 0.32 TCCTCCATCACCTGAAACACTGGAC
24 FLJ10178 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
16 NARF 0.35 TCCTCCATCACCTGAAACACTGGAC
1 PUS3 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
TABLE 74
Tretinoin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
6 PPIB 0.31 AAGCCTATACGTTTCTGTGGAGTAA
6 ZFP36L2 0.48 AAGCCTATACGTTTCTGTGGAGTAA
7 IFI30 0.46 ACTTGTCCTCAGCTTGGGCTTCTTC
16 USP7 0.35 TCCTCCATCACCTGAAACACTGGAC
16 SRM 0.43 TCCTCCATCACCTGAAACACTGGAC
3 SH3BP5 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
10 ALDOC 0.41 TTGGACATCTCTAGTGTAGCTGCCA
7 FADS2 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
10 GUSB 0.38 TTGGACATCTCTAGTGTAGCTGCCA
1 PSCD1 0.48 TCCTGTACTTGTCCTCAGCTTGGGC
1 IQGAP2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
2 STS 0.34 GCCCCACTGGACAACACTGATTCCT
9 MFNG 0.36 TGGACCCCACTGGCTGAGAATCTGG
7 FLI1 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
9 PIM2 0.35 TGGACCCCACTGGCTGAGAATCTGG
1 INPP4A 0.54 TCCTGTACTTGTCCTCAGCTTGGGC
2 LRMP 0.51 GCCCCACTGGACAACACTGATTCCT
4 ICAM2 0.3 AAATGTTTCCTTGTGCCTGCTCCTG
11 EVI2A 0.33 CACCCAGCTGGTCCTGTGGATGGGA
4 MAL 0.46 AAATGTTTCCTTGTGCCTGCTCCTG
10 BTN3A3 0.43 TTGGACATCTCTAGTGTAGCTGCCA
10 PTPN7 0.4 TTGGACATCTCTAGTGTAGCTGCCA
10 IL10RA 0.42 TTGGACATCTCTAGTGTAGCTGCCA
6 SPI1 0.41 AAGCCTATACGTTTCTGTGGAGTAA
3 TRAF1 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
24 ITGB7 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
9 ARHGAP6 0.32 TGGACCCCACTGGCTGAGAATCTGG
2 MAP4K1 0.52 GCCCCACTGGACAACACTGATTCCT
6 CD28 0.34 AAGCCTATACGTTTCTGTGGAGTAA
16 PTP4A3 0.3 TCCTCCATCACCTGAAACACTGGAC
7 LTB 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 C1orf38 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
16 WBSCR22 0.53 TCCTCCATCACCTGAAACACTGGAC
16 CD8B1 0.35 TCCTCCATCACCTGAAACACTGGAC
7 LCP1 0.35 ACTTGTCCTCAGCTTGGGCTTCTTC
16 FLJ13052 0.31 TCCTCCATCACCTGAAACACTGGAC
10 MEF2C 0.71 TTGGACATCTCTAGTGTAGCTGCCA
4 PSCDBP 0.41 AAATGTTTCCTTGTGCCTGCTCCTG
9 IL16 0.51 TGGACCCCACTGGCTGAGAATCTGG
3 SELPLG 0.53 TGCCTGCTCCTGTACTTGTCCTCAG
4 MAGEA9 0.6 AAATGTTTCCTTGTGCCTGCTCCTG
16 LAIR1 0.43 TCCTCCATCACCTGAAACACTGGAC
16 TNFRSF25 0.53 TCCTCCATCACCTGAAACACTGGAC
7 EVI2B 0.42 ACTTGTCCTCAGCTTGGGCTTCTTC
24 IGJ 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
4 PDCD4 0.47 AAATGTTTCCTTGTGCCTGCTCCTG
11 RASA4 0.52 CACCCAGCTGGTCCTGTGGATGGGA
6 HA-1 0.73 AAGCCTATACGTTTCTGTGGAGTAA
1 PLCL2 0.47 TCCTGTACTTGTCCTCAGCTTGGGC
6 RNASE6 0.31 AAGCCTATACGTTTCTGTGGAGTAA
10 WBSCR20C 0.35 TTGGACATCTCTAGTGTAGCTGCCA
6 NUP210 0.36 AAGCCTATACGTTTCTGTGGAGTAA
7 RPL10L 0.39 ACTTGTCCTCAGCTTGGGCTTCTTC
9 C11orf2 0.33 TGGACCCCACTGGCTGAGAATCTGG
3 CABC1 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
1 ARHGEF3 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
3 TAPBPL 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
4 CHST12 0.35 AAATGTTTCCTTGTGCCTGCTCCTG
3 FKBP11 0.54 TGCCTGCTCCTGTACTTGTCCTCAG
10 FLJ35036 0.42 TTGGACATCTCTAGTGTAGCTGCCA
11 MYLIP 0.38 CACCCAGCTGGTCCTGTGGATGGGA
7 TXNDC5 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
16 PACAP 0.3 TCCTCCATCACCTGAAACACTGGAC
1 TOSO 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
9 PNAS-4 0.37 TGGACCCCACTGGCTGAGAATCTGG
6 IL21R 0.57 AAGCCTATACGTTTCTGTGGAGTAA
24 TCF4 0.64 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 75
Ifosfamide biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
9 ARHGDIB 0.36 TGGACCCCACTGGCTGAGAATCTGG
9 ZFP36L2 0.45 TGGACCCCACTGGCTGAGAATCTGG
6 ITM2A 0.39 AAGCCTATACGTTTCTGTGGAGTAA
4 LGALS9 0.54 AAATGTTTCCTTGTGCCTGCTCCTG
1 INPP5D 0.53 TCCTGTACTTGTCCTCAGCTTGGGC
10 SATB1 0.35 TTGGACATCTCTAGTGTAGCTGCCA
6 TFDP2 0.32 AAGCCTATACGTTTCTGTGGAGTAA
3 IL2RG 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
7 CD48 0.5 ACTTGTCCTCAGCTTGGGCTTCTTC
7 SELL 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
3 ADA 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
2 LRMP 0.34 GCCCCACTGGACAACACTGATTCCT
6 RIMS3 0.37 AAGCCTATACGTTTCTGTGGAGTAA
1 LCK 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
11 CXorf9 0.4 CACCCAGCTGGTCCTGTGGATGGGA
2 RHOH 0.3 GCCCCACTGGACAACACTGATTCCT
10 ZNFN1A1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
1 LCP2 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
16 CD1D 0.49 TCCTCCATCACCTGAAACACTGGAC
11 CD2 0.42 CACCCAGCTGGTCCTGTGGATGGGA
4 ZNF91 0.45 AAATGTTTCCTTGTGCCTGCTCCTG
24 MAP4K1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
10 CCR7 0.44 TTGGACATCTCTAGTGTAGCTGCCA
3 IGLL1 0.43 TGCCTGCTCCTGTACTTGTCCTCAG
16 CD3G 0.3 TCCTCCATCACCTGAAACACTGGAC
7 ZNF430 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
10 CCR9 0.31 TTGGACATCTCTAGTGTAGCTGCCA
7 CXCR4 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
6 KIAA0922 0.31 AAGCCTATACGTTTCTGTGGAGTAA
2 TARP 0.31 GCCCCACTGGACAACACTGATTCCT
1 FYN 0.35 TCCTGTACTTGTCCTCAGCTTGGGC
10 SH2D1A 0.34 TTGGACATCTCTAGTGTAGCTGCCA
6 CD1A 0.31 AAGCCTATACGTTTCTGTGGAGTAA
10 LST1 0.33 TTGGACATCTCTAGTGTAGCTGCCA
7 LAIR1 0.36 ACTTGTCCTCAGCTTGGGCTTCTTC
9 TRB@ 0.34 TGGACCCCACTGGCTGAGAATCTGG
10 SEPT6 0.39 TTGGACATCTCTAGTGTAGCTGCCA
16 CD3D 0.37 TCCTCCATCACCTGAAACACTGGAC
4 CD6 0.32 AAATGTTTCCTTGTGCCTGCTCCTG
3 AIF1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
1 CD1E 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 TRIM 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
1 GLTSCR2 0.34 TCCTGTACTTGTCCTCAGCTTGGGC
1 ARHGAP15 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
3 BIN2 0.33 TGCCTGCTCCTGTACTTGTCCTCAG
9 SH3TC1 0.32 TGGACCCCACTGGCTGAGAATCTGG
16 CECR1 0.36 TCCTCCATCACCTGAAACACTGGAC
16 BCL11B 0.38 TCCTCCATCACCTGAAACACTGGAC
2 GIMAP6 0.32 GCCCCACTGGACAACACTGATTCCT
10 STAG3 0.46 TTGGACATCTCTAGTGTAGCTGCCA
7 GALNT6 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
24 MGC5566 0.49 TCCTTGTGCCTGCTCCTGTACTTGT
1 PACAP 0.48 TCCTGTACTTGTCCTCAGCTTGGGC
3 LEF1 0.4 TGCCTGCTCCTGTACTTGTCCTCAG
TABLE 76
Tamoxifen biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
1 MLP 0.33 TCCTGTACTTGTCCTCAGCTTGGGC
24 GLUL 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
11 SLC9A3R1 0.37 CACCCAGCTGGTCCTGTGGATGGGA
10 ZFP36L2 0.33 TTGGACATCTCTAGTGTAGCTGCCA
16 INSIG1 0.31 TCCTCCATCACCTGAAACACTGGAC
1 TBL1X 0.36 TCCTGTACTTGTCCTCAGCTTGGGC
4 NDUFAB1 0.43 AAATGTTTCCTTGTGCCTGCTCCTG
9 EBP 0.31 TGGACCCCACTGGCTGAGAATCTGG
10 TRIM14 0.43 TTGGACATCTCTAGTGTAGCTGCCA
2 SRPK2 0.41 GCCCCACTGGACAACACTGATTCCT
4 PMM2 0.4 AAATGTTTCCTTGTGCCTGCTCCTG
6 CLDN3 0.41 AAGCCTATACGTTTCTGTGGAGTAA
10 GCH1 0.34 TTGGACATCTCTAGTGTAGCTGCCA
4 IDI1 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
24 TTF1 0.46 TCCTTGTGCCTGCTCCTGTACTTGT
11 MYB 0.39 CACCCAGCTGGTCCTGTGGATGGGA
11 RASGRP1 0.32 CACCCAGCTGGTCCTGTGGATGGGA
9 HIST1H3H 0.38 TGGACCCCACTGGCTGAGAATCTGG
4 CBFA2T3 0.34 AAATGTTTCCTTGTGCCTGCTCCTG
2 SRRM2 0.43 GCCCCACTGGACAACACTGATTCCT
1 ANAPC5 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
1 MBD4 0.5 TCCTGTACTTGTCCTCAGCTTGGGC
16 GATA3 0.32 TCCTCCATCACCTGAAACACTGGAC
6 HIST1H2BG 0.32 AAGCCTATACGTTTCTGTGGAGTAA
9 RAB14 0.31 TGGACCCCACTGGCTGAGAATCTGG
6 PIK3R1 0.36 AAGCCTATACGTTTCTGTGGAGTAA
11 MGC50853 0.37 CACCCAGCTGGTCCTGTGGATGGGA
2 ELF1 0.35 GCCCCACTGGACAACACTGATTCCT
24 ZRF1 0.32 TCCTTGTGCCTGCTCCTGTACTTGT
4 ZNF394 0.31 AAATGTTTCCTTGTGCCTGCTCCTG
4 S100A14 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
11 SLC6A14 0.31 CACCCAGCTGGTCCTGTGGATGGGA
16 GALNT6 0.37 TCCTCCATCACCTGAAACACTGGAC
4 SPDEF 0.44 AAATGTTTCCTTGTGCCTGCTCCTG
6 TPRT 0.5 AAGCCTATACGTTTCTGTGGAGTAA
10 CALML4 0.31 TTGGACATCTCTAGTGTAGCTGCCA
TABLE 77
Floxuridine biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
7 CSDA 0.33 ACTTGTCCTCAGCTTGGGCTTCTTC
9 F8A1 0.31 TGGACCCCACTGGCTGAGAATCTGG
9 KYNU 0.32 TGGACCCCACTGGCTGAGAATCTGG
6 PHF14 0.31 AAGCCTATACGTTTCTGTGGAGTAA
16 SERPINB2 0.34 TCCTCCATCACCTGAAACACTGGAC
2 OPHN1 0.31 GCCCCACTGGACAACACTGATTCCT
6 HRMT1L2 0.31 AAGCCTATACGTTTCTGTGGAGTAA
2 TNFRSF1A 0.3 GCCCCACTGGACAACACTGATTCCT
6 PPP4C 0.31 AAGCCTATACGTTTCTGTGGAGTAA
16 CES1 0.3 TCCTCCATCACCTGAAACACTGGAC
2 TP53AP1 0.3 GCCCCACTGGACAACACTGATTCCT
2 TM4SF4 0.32 GCCCCACTGGACAACACTGATTCCT
3 RPL5 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
9 BC008967 0.32 TGGACCCCACTGGCTGAGAATCTGG
10 TLK2 0.35 TTGGACATCTCTAGTGTAGCTGCCA
24 COL4A6 0.31 TCCTTGTGCCTGCTCCTGTACTTGT
11 PAK3 0.32 CACCCAGCTGGTCCTGTGGATGGGA
24 RECK 0.34 TCCTTGTGCCTGCTCCTGTACTTGT
6 LOC51321 0.32 AAGCCTATACGTTTCTGTGGAGTAA
16 MST4 0.36 TCCTCCATCACCTGAAACACTGGAC
9 DERP6 0.32 TGGACCCCACTGGCTGAGAATCTGG
24 SCD4 0.33 TCCTTGTGCCTGCTCCTGTACTTGT
9 FLJ22800 0.31 TGGACCCCACTGGCTGAGAATCTGG
TABLE 78
Irinotecan biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
3 CSDA 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
2 UBE2L6 0.32 GCCCCACTGGACAACACTGATTCCT
9 TAP1 0.44 TGGACCCCACTGGCTGAGAATCTGG
3 RPS19 0.32 TGCCTGCTCCTGTACTTGTCCTCAG
7 SERPINA1 0.32 ACTTGTCCTCAGCTTGGGCTTCTTC
10 C1QR1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
11 SLA 0.33 CACCCAGCTGGTCCTGTGGATGGGA
3 GPSM3 0.46 TGCCTGCTCCTGTACTTGTCCTCAG
3 PSMB9 0.3 TGCCTGCTCCTGTACTTGTCCTCAG
3 EDG1 0.34 TGCCTGCTCCTGTACTTGTCCTCAG
2 FMNL1 0.4 GCCCCACTGGACAACACTGATTCCT
10 PTPN7 0.39 TTGGACATCTCTAGTGTAGCTGCCA
6 ZNFN1A1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
10 CENTB1 0.33 TTGGACATCTCTAGTGTAGCTGCCA
7 BATF 0.41 ACTTGTCCTCAGCTTGGGCTTCTTC
4 MAP4K1 0.39 AAATGTTTCCTTGTGCCTGCTCCTG
6 PDE4C 0.31 AAGCCTATACGTTTCTGTGGAGTAA
24 SP110 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
9 HLA-DRA 0.31 TGGACCCCACTGGCTGAGAATCTGG
10 IFI16 0.36 TTGGACATCTCTAGTGTAGCTGCCA
6 HLA-DRB1 0.32 AAGCCTATACGTTTCTGTGGAGTAA
7 ARHGEF6 0.43 ACTTGTCCTCAGCTTGGGCTTCTTC
24 SELPLG 0.35 TCCTTGTGCCTGCTCCTGTACTTGT
11 SEC31L2 0.35 CACCCAGCTGGTCCTGTGGATGGGA
16 CD3Z 0.51 TCCTCCATCACCTGAAACACTGGAC
10 PRKCQ 0.39 TTGGACATCTCTAGTGTAGCTGCCA
6 SH2D1A 0.43 AAGCCTATACGTTTCTGTGGAGTAA
16 GZMB 0.49 TCCTCCATCACCTGAAACACTGGAC
7 TRB@ 0.43 ACTTGTCCTCAGCTTGGGCTTCTTC
7 HLA-DPA1 0.47 ACTTGTCCTCAGCTTGGGCTTCTTC
24 AIM1 0.36 TCCTTGTGCCTGCTCCTGTACTTGT
9 DOCK2 0.39 TGGACCCCACTGGCTGAGAATCTGG
1 CD3D 0.31 TCCTGTACTTGTCCTCAGCTTGGGC
10 IFITM1 0.31 TTGGACATCTCTAGTGTAGCTGCCA
2 ZAP70 0.31 GCCCCACTGGACAACACTGATTCCT
11 PRF1 0.47 CACCCAGCTGGTCCTGTGGATGGGA
2 Clorf24 0.39 GCCCCACTGGACAACACTGATTCCT
16 ARHGAP15 0.48 TCCTCCATCACCTGAAACACTGGAC
11 C13orf18 0.33 CACCCAGCTGGTCCTGTGGATGGGA
24 TM6SF1 0.37 TCCTTGTGCCTGCTCCTGTACTTGT
TABLE 79
Satraplatin biomarkers.
SEQ
ID Corre-
NO Gene lation Medianprobe
1 STAT1 0.32 TCCTGTACTTGTCCTCAGCTTGGGC
4 HSBP1 0.33 AAATGTTTCCTTGTGCCTGCTCCTG
6 IFI30 0.35 AAGCCTATACGTTTCTGTGGAGTAA
16 RIOK3 0.36 TCCTCCATCACCTGAAACACTGGAC
7 TNFSF10 0.31 ACTTGTCCTCAGCTTGGGCTTCTTC
24 ALOX5AP 0.3 TCCTTGTGCCTGCTCCTGTACTTGT
9 ADFP 0.33 TGGACCCCACTGGCTGAGAATCTGG
1 IRS2 0.37 TCCTGTACTTGTCCTCAGCTTGGGC
10 EFEMP2 0.31 TTGGACATCTCTAGTGTAGCTGCCA
9 RTPK2 0.35 TGGACCCCACTGGCTGAGAATCTGG
16 DKFZp564I1922 0.33 TCCTCCATCACCTGAAACACTGGAC
16 MT1K 0.34 TCCTCCATCACCTGAAACACTGGAC
7 RNASET2 0.38 ACTTGTCCTCAGCTTGGGCTTCTTC
11 EFHD2 0.31 CACCCAGCTGGTCCTGTGGATGGGA
2 TRIB3 0.33 GCCCCACTGGACAACACTGATTCCT
4 ACSL5 0.42 AAATGTTTCCTTGTGCCTGCTCCTG
7 IFIH1 0.37 ACTTGTCCTCAGCTTGGGCTTCTTC
3 DNAPTP6 0.42 TGCCTGCTCCTGTACTTGTCCTCAG
TABLE 80
Vincristine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2281 Hcd892 left 0.3 GAGGGCTGGAGAGGTTGGGTGCGCTTGTGCGTTTCACTTT
2282 Hcd678 right 0.27 GCCCTGAAGCTCCGGACTACAGCTCCCAGGCCTCTCCAAG
2283 mir-007-1-prec 0.28 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2284 MPR243 left 0.25 GTATTTACCTAGTTGTAATGTGGGTTGCCATGGTGTTTTG
2285 Hcd654 left 0.25 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2286 mir-487No1 0.26 TTATGACGAATCATACAGGGACATCCAGTTTTTCAGTATC
2287 Hcd794 right 0.35 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2288 Hcd739 right 0.32 TATTAGCTGAGGGAGGGCTGGAGGCGGCTGCATTCCGACT
2289 Hcd562 right 0.28 CGCATGTCCTGGCCCTCGTCCTTCCATGGCACTGGCACCG
TABLE 81
Cisplatin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.34 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2291 HPR187 right 0.25 TATTTATTACAAGGTCCTTCTTCCCCGTAAAACTTTGTCC
2292 mir-450-1 0.26 AACGATACTAAACTGTTTTTGCGATGTGTTCCTAATATGC
2293 mir-155-prec 0.31 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2294 mir-515-15p 0.25 GATCTCATGCAGTCATTCTCCAAAAGAAAGCACTTTCTGT
2295 mir-181b-precNo2 0.25 ACCATCGACCGTTGATTGTACCCTATGGCTAACCATCATC
2296 mir-124a-1-prec1 0.26 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2297 mir-450-2No1 0.3 GAAAGATGCTAAACTATTTTTGCGATGTGTTCCTAATATG
2298 Hcd923 right 0.31 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2299 mir-342No1 0.31 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.27 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.26 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.38 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2303 Hcd213_HPR182 left 0.3 CTGTTTCATACTTGAGGAGAAATTATCCTTGGTGTGTTCG
TABLE 82
Azaguanine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2304 MPR121 left 0.3 CACCTGGCTCTGAGAACTGAATTCCATAGGCTGTGAGCTC
2305 HUMTRS 0.26 TCTAGCGACAGAGTGGTTCAATTCCACCTTTCGGGCGCCA
2306 mir-213-precNo1 0.26 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2293 mir-155-prec 0.4 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2308 mir-147-prec 0.47 GACTATGGAAGCCAGTGTGTGGAAATGCTTCTGCTAGATT
2309 mir-100No1 0.26 CCTGTTGCCACAAACCCGTAGATCCGAACTTGTGGTATTA
2310 mir-138-1-prec 0.29 AGCTGGTGTTGTGAATCAGGCCGTTGCCAATCAGAGAACG
2311 mir-140No2 0.38 TTCTACCACAGGGTAGAACCACGGACAGGATACCGGGGCA
2312 mir-146-prec 0.51 TGAGAACTGAATTCCATGGGTTGTGTCAGTGTCAGACCTC
2313 mir-509No1 0.25 ATTAAAAATGATTGGTACGTCTGTGGGTAGAGTACTGCAT
2314 mir-146bNo1 0.33 CACCTGGCACTGAGAACTGAATTCCATAGGCTGTGAGCTC
2315 Hcd514 right 0.26 ATTAGAGACTCGTTAAGAGAAGGTGAGAAGGGCTCAGTAA
2316 Hcd397 left 0.34 GTGTGTATACTTATGTGTGTGTATGTGTGAGTGTGAATAT
2317 Hcd731 left 0.27 AATTGTGACAACTGAGTGGGAGGTTTGTGTGATGATTATC
2318 mir-034-precNo2 0.32 AGTAAGGAAGCAATCAGCAAGTATACTGCCCTAGAAGTGC
2319 mir-100-1/2-prec 0.3 TGAGGCCTGTTGCCACAAACCCGTAGATCCGAACTTGTGG
TABLE 83
Etoposide microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2320 Hcd415 right 0.28 GATGTTTGGGAAACAATGGGAGTGAGAGAATGGGAGAGCT
2321 Hcd768 right 0.37 GCCCTGGCGGAACGCTGAGAAGACAGTCGAACTTGACTAT
2290 HUMTRF 0.38 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2323 Hcd866 right 0.26 GTCATGCTGCCACCAGCAGGCAGAGAAGAAGCAGAAGAAC
2324 Hcd145 left 0.33 AAAAATCCCAGCGGCCACCTTTCCTCCCTGCCCCATTGGG
2325 HUMTRAB 0.29 ATGGTAGAGCGCTCGCTTTGCTTGCGAGAGGTAGCGGGAT
2326 Hcd913 right 0.36 CAAACATCATGTGACGTCTGTGGAGCGGCGGCGGCGGCGG
2327 HPR163 left 0.29 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2328 Hcd697 right 0.27 GGCCTCATGCTGCCAAGGGCTGGCAAGAAGTCCCTGCTTG
2329 Hcd755 left 0.26 GGAAGTGGAGCAAATGGATGGAAAGCAATTTTTGGAAGAT
2330 Hcd716 right 0.25 CAATAAATGTGCCTATAAAGGCGCCGGCTCCGGGGCGCGG
2331 MPR207 right 0.33 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCTA
2332 HSTRNL 0.26 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2333 HPR206 left 0.29 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2284 MPR243 left 0.27 GTATTTACCTAGTTGTAATGTGGGTTGCCATGGTGTTTTG
2285 Hcd654 left 0.4 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2336 MPR130 left 0.28 AGGCCAAGGTGACGGGTGCGATTTCTGTGTGAGACAATTC
2337 Hcd782 left 0.26 GGAGCCCTGTCTGCAAAGAGTGGTGCGTGTGCGTGTGTGA
2287 Hcd794 right 0.26 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2288 Hcd739 right 0.3 TATTAGCTGAGGGAGGGCTGGAGGCGGCTGCATTCCGACT
2300 mir-142-prec 0.29 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.29 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2342 HUMTRV1A 0.29 ACGCGAAAGGTCCCCGGTTCGAAACCGGGCGGAAACACCA
2302 Hcd754 left 0.34 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
TABLE 84
Carboplatin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2344 Hcd829 right 0.27 AAAATGGCGGCGGGAAAAGCGAGCGGCGAGAGCGAGGAGG
2290 HUMTRF 0.26 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2346 HPR187 left 0.29 TGTGTGTTGCGGGGGTGGGGGCCGGTGAAAGTGATTTGAT
2347 Hcd210_HPR205 right 0.32 CGAAACATTCGCGGTGCACTTCTTTTTCAGTATCCTATTC
2348 mir-379No1 0.26 TTCCGTGGTTCCTGAAGAGATGGTAGACTATGGAACGTAG
2306 mir-213-precNo1 0.26 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2350 mir-4325p 0.29 CCAGGTCTTGGAGTAGGTCATTGGGTGGATCCTCTATTTC
2292 mir-450-1 0.3 AACGATACTAAACTGTTTTTGCGATGTGTTCCTAATATGC
2293 mir-155-prec 0.25 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2353 Hcd28_HPR39right 0.26 AAGCTCCCAAATTAGCTTTTTAAATAGAAGCTGAGAGTTA
2354 MPR244 right 0.27 TAAACATAGAGGAAATTTCACGTTTTCAGTGTCAAATGCT
2355 mir-409-3p 0.3 GACGAATGTTGCTCGGTGAACCCCTTTTCGGTATCAAATT
2296 mir-124a-1-prec1 0.28 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2357 mir-154-prec1No1 0.26 GTGGTACTTGAAGATAGGTTATCCGTGTTGCCTTCGCTTT
2358 mir-495No1 0.32 GTGACGAAACAAACATGGTGCACTTCTTTTTCGGTATCAA
2359 mir-515-23p 0.25 CAGAGTGCCTTCTTTTGGAGCGTTACTGTTTGAGAAAAAC
2360 Hcd438 right 0.27 GTGTTTATTTGAATCTCACATCGCTCATAAGAATACACGC
2361 Hcd770 left 0.3 CCAGTATACAATCCGTTTTTCAGTTTAGCTTGAGATCAGA
2362 mir-382 0.32 GGTACTTGAAGAGAAGTTGTTCGTGGTGGATTCGCTTTAC
2301 mir-223-prec 0.3 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.48 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2303 Hcd213_HPR182 left 0.31 CTGTTTCATACTTGAGGAGAAATTATCCTTGGTGTGTTCG
TABLE 85
Adriamycin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2321 Hcd768 right 0.25 GCCCTGGCGGAACGCTGAGAAGACAGTCGAACTTGACTAT
2367 mir-483No1 0.28 ATCACGCCTCCTCACTCCTCTCCTCCCGTCTTCTCCTCTC
2324 Hcd145 left 0.28 AAAAATCCCAGCGGCCACCTTTCCTCCCTGCCCCATTGGG
2369 mir-197-prec 0.25 TAAGAGCTCTTCACCCTTCACCACCTTCTCCACCCAGCAT
2370 mir-212-precNo1 0.27 CCTCAGTAACAGTCTCCAGTCACGGCCACCGACGCCTGGC
2327 HPR163 left 0.3 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2285 Hcd654 left 0.26 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2299 mir-342No1 0.32 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2287 Hcd794 right 0.32 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2300 mir-142-prec 0.38 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2302 Hcd754 left 0.28 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
TABLE 86
Aclarubicin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.32 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2378 mir-096-prec-7No2 0.29 TGGCCGATTTTGGCACTAGCACATTTTTGCTTGTGTCTCT
2379 Hcd605 left 0.26 ATTACTAGCAGTTAATGATTGGTTTGTTAGTTAATGGCCC
2380 mir-007-2-precNo2 0.34 GGACCGGCTGGCCCCATCTGGAAGACTAGTGATTTTGTTG
2381 mir-019b-2-prec 0.28 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2382 MPR216 left 0.26 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2383 mir-019b-1-prec 0.25 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.26 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2332 HSTRNL 0.26 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2386 mir-025-prec 0.31 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2283 mir-007-1-prec 0.4 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2388 mir-019a-prec 0.26 TGTAGTTGTGCAAATCTATGCAAAACTGATGGTGGCCTGC
2389 mir-380-5p 0.31 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2390 mir-093-prec-7.1 = 093-1 0.37 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.37 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.32 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2393 mir-018-prec 0.31 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.36 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 87
Mitoxantrone microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2395 Hcd768 left 0.26 GATGGTTTAGTGAGGCCCTCGGATCAGCCCGCTGGGTCAG
2290 HUMTRF 0.31 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2306 mir-213-precNo1 0.28 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2398 mir-181b-precNo1 0.26 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2354 M2R244 right 0.27 TAAACATAGAGGAAATTTCACGTTTTCAGTGTCAAATGCT
2355 mir-409-3p 0.29 GACGAATGTTGCTCGGTGAACCCCTTTTCGGTATCAAATT
2332 HSTRNL 0.33 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2362 mir-382 0.34 GGTACTTGAAGAGAAGTTGTTCGTGGTGGATTCGCTTTAC
2299 mir-342No1 0.3 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.27 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2405 Hcd200 right 0.29 CAATTAGCCAATTGTGGGTATAATTAGCTGCATGTAGAAT
TABLE 88
Mitomycin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.26 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2407 Hcd148_HPR225left 0.27 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2408 Hcd938 right 0.26 ATTCCCTGCATCACTCTCATGAAATGGCTGAGAAAGTGAG
2409 MPR174 left 0.32 GAGCCGGTCTCTTTACATCTCAAATACCAGGTATTTAGGT
2410 mir-4323p 0.29 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 89
Paclitaxel (Taxol) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.29 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2412 mir-096-prec-7No1 0.36 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2413 mir-101-prec-9 0.38 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2414 mir-20bNo1 0.28 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2381 mir-019b-2-prec 0.28 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2416 mir-032-precNo2 0.29 GGAGATATTGCACATTACTAAGTTGCATGTTGTCACGGCC
2417 MPR156 left 0.25 TCCCTCACTTGAACTGACTGCCAGAGTTCACAGACAGCTG
2383 mir-019b-1-prec 0.28 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.36 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2386 mir-025-prec 0.36 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2283 mir-007-1-prec 0.27 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2422 mir-361No1 0.29 GGATTTGGGAGCTTATCAGAATCTCCAGGGGTACTTTATA
2390 mir-093-prec-7.1 = 093-1 0.37 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.38 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2425 mir-098-prec-X 0.29 TGAGGTAGTAAGTTGTATTGTTGTGGGGTAGGGATATTAG
2300 mir-142-prec 0.27 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.26 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2393 mir-018-prec 0.4 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.36 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 90
Gemcitabine (Gemzar) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2430 mir-123-precNo2 0.27 TGTGACACTTCAAACTCGTACCGTGAGTAATAATGCGCCG
2431 Hcd257 right 0.29 CTTGGTTTTTGCAATAATGCTAGCAGAGTACACACAAGAA
2493 mir-155-prec 0.35 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2433 ath-MIR180aNo2 0.26 TGAGAATCTTGATGATGCTGCATCGGCAATCAACGACTAT
2434 Hcd448 left 0.33 TGTAATTCCATTGAGGGTTTCTGGTGACTCCAGCTTCGTA
2332 HSTRNL 0.31 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2436 MPR174 right 0.29 CATTAGGGACACGTGTGAGTGTGCCAGGCTCATTCCTGAG
2405 Hcd200 right 0.29 CAATTAGCCAATTGTGGGTATAATTAGCTGCATGTAGAAT
2410 mir-4323p 0.26 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
2439 HPR244 right 0.3 TAGTTCATGGCGTCCAGCAGCAGCTTCTGGCAGACCGGGT
TABLE 91
Taxotere (docetaxel) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2412 mir-096-prec-7No1 0.28 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2441 mir-095-prec-4 0.27 CGTTACATTCAACGGGTATTTATTGAGCACCCACTCTGTG
2332 HSTRNL 0.26 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2283 mir-007-1-prec 0.37 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
TABLE 392
Dexamethasone microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2444 MPR141 left 0.42 CTCAGTCGTGCCCTAGCAGCGGGAACAGTACTGCAGTGAG
2445 mir-424No2 0.35 GTTCAAAACGTGAGGCGCTGCTATACCCCCTCGTGGGGAA
2446 Hcd690 right 0.26 GGACAAGGGAGGAGACACGCAGAGGTGACAGAAAGGTTAG
2447 Hcd783 left 0.26 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2448 mir-150-prec 0.38 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
2449 Hcd266 left 0.37 AAGGTCTTTGGTCTTGGAGGAAGGTGTGCTACTGGAAGAG
2450 mir-503No1 0.34 CTCAGCCGTGCCCTAGCAGCGGGAACAGTTCTGCAGTGAG
2451 mir-128b-precNo1 0.29 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2316 Hcd397 left 0.26 GTGTGTATACTTATGTGTGTGTATGTGTGAGTGTGAATAT
2453 mir-484 0.38 GTCAGGCTCAGTCCCCTCCCGATAAACCCCTAAATAGGGA
TABLE 93
Ara-C (Cytarabine hydrochloride) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.33 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2293 mir-155-prec 0.28 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2294 mir-515-15p 0.27 GATCTCATGCAGTCATTCTCCAAAAGAAAGCACTTTCTGT
2408 Hcd938 right 0.26 ATTCCCTGCATCACTCTCATGAAATGGCTGAGAAAGTGAG
2458 Hcd642 right 0.25 TCAGGGTTTATGAAGTTATCAAAGCCCCTTGATGGAATTA
2459 Hcd120 left 0.26 CTTGGTGTGTTCTCGGTAGCTATGGAAATCCCAGGGTTTC
2389 mir-380-5p 0.25 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2299 mir-342No1 0.25 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.27 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.31 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2410 mir-4323p 0.28 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 94
Methylprednisolone microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2465 Hcd544 left 0.26 TTCCAGGTGTCCACCAAGGACGTGCCGCTGGCGCTGATGG
2466 mir-181c-precNo1 0.28 TGCCAAGGGTTTGGGGGAACATTCAACCTGTCGGTGAGTT
2467 Hcd517 left 0.25 TTAAAGCAGGAGAGGTGAGAGGAAGAATTAATGTGTGCTC
2468 MPR151 left 0.27 GGGATTAATGACCAGCTGGGGGAGTTGATAGCCCTCAGTG
2306 mir-213-precNo1 0.34 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2295 mir-181b-precNo2 0.36 ACCATCGACCGTTGATTGTACCCTATGGCTAACCATCATC
2448 mir-150-prec 0.27 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
2472 mir-153-1-prec1 0.28 CAGTTGCATAGTCACAAAAGTGATCATTGGCAGGTGTGGC
2451 mir-128b-precNo1 0.48 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2474 Hcd812 left 0.25 CTGTGGGATCTGGTTCTGTAGCTGAGAGCACATCGCTAAA
2475 mir-195-prec 0.3 TCTAGCAGCACAGAAATATTGGCACAGGGAAGCGAGTCTG
2299 mir-342No1 0.38 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2477 mir-370No1 0.28 TTACACAGCTCACGAGTGCCTGCTGGGGTGGAACCTGGTC
2300 mir-142-prec 0.32 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.36 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2453 mir-484 0.36 GTCAGGCTCAGTCCCCTCCCGATAAACCCCTAAATAGGGA
TABLE 95
Methotrexate microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.37 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2412 mir-096-prec-7No1 0.33 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2483 mir-123-precNo1 0.25 GACGGGACATTATTACTTTTGGTACGCGCTGTGACACTTC
2484 Hcd250 left 0.26 GTTCTGTTGCTAAGACAACAGGATGCTAGCAGGCATATGC
2485 mir-518e/526c 0.3 TCTCAGGCTGTGACCCTCTAGAGGGAAGCGCTTTCTGTTG
2486 HPR232 right 0.3 TGAATTATTGCACAATAAATTCATGCCCTCTTGTGTCTTA
2487 Hcd263 left 0.29 GAGCATTAAGATTTCCTATTCTTTGAGGCAAATATTGACC
2488 mir-516-33p 0.35 GTGAAAGAAAGTGCTTCCTTTCAGAGGGTTACTCTTTGAG
2379 Hcd605 left 0.27 ATTACTAGCAGTTAATGATTGGTTTGTTAGTTAATGGCCC
2490 Hcd373 right 0.25 CCTGAAAGGTCTGGTGTTAAGCAAATACTCGGTGACCAGA
2491 MPR254 right 0.28 GTTCACAGTGGGAGAAATATGCTTCGTATTACTCTTTCTC
2492 MPR215 left 0.3 CAGCTATGTGGACTCTAGCTGCCAAAGGCGCTTCTCCTTC
2290 HUMTRF 0.28 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2391 mir-106aNo1 0.27 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2414 mir-20bNo1 0.37 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2496 Hcd361 right 0.28 AACTTGGCTACAAGGCTCTTTCCCTCTCTATGAAGGACAG
2497 Hcd412 left 0.25 AGTTGGGGAGAACTTTATGATTATTCTCATGCATCATCTT
2498 Hcd781 left 0.26 GAGTGTGGATCTAATCTTCAGCTGATTAAATGTCCCTCAT
2381 mir-019b-2-prec 0.33 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2500 HPR214 right 0.29 AGCAAAAGCTATTATTTGCCCTTGATGAGCCAATCAGATG
2501 Hcd807 right 0.26 GCGCTGACAAATCTTGCCTGATTCTGTATGATCCATGAGA
2502 Hcd817 left 0.37 TAATGAGAATTATGTTTGCACATTGAGGCAGGATAAATCC
2503 Hcd788 left 0.25 GACAAACATGCAGGAAAAATTATCCCCTGGGGATTCTACA
2504 Hcd970 left 0.31 TTGTGGGTCAGCTGCCCAGCTATCGGCTGGATTAGTGAAT
2407 Hcd148_HPR225left 0.26 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2506 Hcd102 left 0.27 ACTGGAATTATGTTTTATCTTAAGTCCACACTGGATCCTC
2507 Hcd246 right 0.29 TAAAGTGAGTTATGGAGGTTACTCTCCTGTGAGAGGAAAT
2508 HPR199 right 0.28 TACACCTAAGGCATGTACTGTATTAATGAACCAATAAAAC
2509 HPR233 right 0.27 CATGATGGGGTGGGGTGAGATGGGGAGCGAAGACTATTAC
2510 Hcd383 left 0.28 GCCCGGGCATGCATTTTATCTAGCACCATGTGTTTCAGCT
2486 MPR224 right 0.29 TGAATTATTGCACAATAAATTCATGCCCTGTTGTGTCTTA
2512 HPR172 right 0.26 GTTTAAACAGCCAGTGCAAACATTTAGATCTGAGTCAAAA
2382 MPR216 left 0.34 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2514 mir-321No2 0.25 CAGGGATTGTGGGTTCGAGTCCCACCCGGGGTAAAGAAAG
2515 Hcd586 right 0.28 GAACTGTTTGCTTTGGATGGGCTTGGTCCTCATTGGCTGA
2516 Hcd587 right 0.3 AAATAATGACTGGCCATAAGATCAAGACAAGTGTCCAAAG
2517 Hcd249 right 0.39 CAGGTACATGTTGATCAGCAGGGGCTGGGAGGCGCCGCTC
2518 Hcd279 right 0.27 CTCACGGCGTTGCCATGGAGACAACTCCGGGGCTGGGGCTC
2519 HPR159 left 0.3 TCCGTCACTTGAACTGGCTGCCAGCGTTCACAGACAGCTG
2520 Hcd689 right 0.28 GTACATCTGGATGTAGTTGTGCTGCAGCTGCTTCTGGTAG
2521 Hcd691 right 0.32 CGGCAAAAACCTCTGTCAGAACAAAATTAGGTGATCTATC
2383 mir-019b-1-prec 0.32 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2523 Hcd413 right 0.26 CACAAAAAGGCATAAGCAGACATCTTGCCCTTTGGTTTCT
2524 Hcd581 right 0.26 AGGAGATATGCCAAGATATATTCACAGCTTTATATACACA
2525 Hcd536_HPR104 right 0.28 GCTGCTCTGCTGAGGGGCTGGACTCTGTCCAGAAGCACCA
2526 Hcd230 left 0.28 CATTCTCTACAAGCATATGGCCTTGGGACATTAAGATGGC
2527 HPR154 left 0.28 AACATCAAGATCTATTGACCTGAGAGGTAAATATTGACCG
2528 Hcd270 right 0.31 AAATGTTGTTATAGTATCCCACCTACCCTGATGTATCTTT
2529 Hcd649 right 0.26 GAACAGGCTTCAAGGTTCTTGGCAGGAATATTCCGTGTAG
2530 Hcd889 right 0.27 ATGCCTTGTGCTCTGTGCTAATTCAGAAGAATAAGCCTGT
2531 Hcd938 left 0.36 CTTGTCGACTAGCCAGTTATGAACAGAGGAGGATGTTCTC
2532 HPR266 right 0.32 GGAGATCCCTTCAAGGTACTTAGTTTTAAATGAGTGCTCT
2386 mir-025-prec 0.39 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2534 Hcd355_HPR190 left 0.25 TTGTGCACTGCACAACCCTAGTGGCGCCATTCAATTATAG
2535 MPR162 left 0.26 CTCTCTTTTTCCTGCTTGATTTGCCTAATGGAAGCTGACA
2298 Hcd923 right 0.34 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2537 MPR237 left 0.32 AGCACATCCCATGATCACAGTAATGTTCTTTGGAGATGTA
2409 MPR174 left 0.32 GAGCCGGTCTCTTTACATCTCAAATACCAGGTATTTAGGT
2388 mir-019a-prec 0.31 TGTAGTTGTGCAAATCTATGCAAAACTGATGGTGGCCTGC
2540 hsa_mir_490_Hcd20 right 0.25 ACCAACCTGGAGGACTCCATGCTGTTGAGCTGTTCACAAG
2389 mir-380-5p 0.36 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2390 mir-093-prec-7.1 = 093-1 0.38 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.45 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2544 Hcd627 left 0.3 GCATTAGGGAGAATAGTTGATGGATTACAAATCTCTGCAT
2300 mir-142-prec 0.27 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.29 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2547 mir-001b-2-prec 0.28 TAAGCTATGGAATGTAAAGAAGTATGTATCTCAGGCCGGG
2393 mir-018-prec 0.4 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.48 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
2550 Hcd404 left 0.29 TGCTGCTGTTAATGCCATTAGGATGACTATTTATATCACC
2551 mir-384 0.25 CATAAGTCATTCCTAGAAATTGTTCATAATGCCTGTAACA
2410 mir-4323p 0.4 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 96
Bleomycin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2553 mir-376aNo1 0.27 AATCATAGAGGAAAATCCACGTTTTCAGTATCAAATGCTG
2293 mir-155-prec 0.35 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2355 mir-409-3p 0.28 GACGAATGTTGCTCGGTGAACCCCTTTTCGGTATCAAATT
2358 mir-495No1 0.29 GTGACGAAACAAACATGGTGCACTTCTTTTTCGGTATCAA
2557 Hcd498 right 0.28 CACGAAGAAGTTCAGCAACCAGGAGACCAGGTGGGGGCCG
2558 mir-199a-2-prec 0.41 TCGCCCCAGTGTTCAGACTACCTGTTCAGGACAATGCCGT
2362 mir-382 0.3 GGTACTTGAAGAGAAGTTGTTCGTGGTGGATTCGCTTTAC
2560 HPR271 right 0.27 AATTGAGCAAACAGTGCAATTTTCTGTAATTATGCCAGTG
2561 mir-145-prec 0.31 CCTCACGGTCCAGTTTTCCCAGGAATCCCTTAGATGCTAA
2562 mir-199a-1-prec 0.35 GCCAACCCAGTGTTCAGACTACCTGTTCAGGAGGCTCTCA
TABLE 97
Methyl-GAG (methyl glyoxal bis amidinohydrazone dihydrochloride)
microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.32 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2413 mir-101-prec-9 0.3 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2565 mir-144-precNo2 0.29 CCCTGGCTGGGATATCATCATATACTGTAAGTTTGCGATG
2566 mir-519a-1/526c 0.29 TCAGGCTGTGACACTCTAGAGGGAAGCGCTTTCTGTTGTC
2567 mir-519b 0.33 GAAAAGAAAGTGCATCCTTTTAGAGGTTTACTGTTTGAGG
2568 mir-015b-precNo2 0.26 TGCTACAGTCAAGATGCGAATCATTATTTGCTGCTCTAGA
2391 mir-106aNo1 0.27 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2570 mir-16-1No1 0.26 GTCAGCAGTGCCTTAGCAGCACGTAAATATTGGCGTTAAG
2571 mir-181dNo1 0.27 GAGGTCACAATCAACATTCATTGTTGTCGGTGGGTTGTGA
2572 mir-017-precNo2 0.31 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.32 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2574 mir-192No2 0.26 TGCCAATTCCATAGGTCACAGGTATGTTCGCCTCAATGCC
2306 mir-213-precNo1 0.25 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2576 mir-215-precNo2 0.3 CATTTCTTTAGGCCAATATTCTGTATGACTGTGCTACTTC
2577 mir-107No1 0.28 GGCATGGAGTTCAAGCAGCATTGTACAGGGCTATCAAAGC
2578 mir-200bNo1 0.28 GTCTCTAATACTGCCTGGTAATGATGACGGCGGAGCCCTG
2579 mir-103-prec-5 = 103-1 0.3 TATGGATCAAGCAGCATTGTACAGGGCTATGAAGGCATTG
2566 mir-519a-1/526c 0.37 TCAGGCTGTGACACTCTAGAGGGAAGCGCTTTCTGTTGTC
2382 MPR216 left 0.28 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2383 mir-019b-1-prec 0.31 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2577 mir-107-prec-10 0.29 GGCATGGAGTTCAAGCAGCATTGTACAGGGCTATCAAAGC
2384 mir-135-2-prec 0.39 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2585 mir-103-2-prec 0.29 GTAGCATTCAGGTCAAGCAACATTGTACAGGGCTATGAAA
2586 mir-519a-2No2 0.29 TCTCAGGCTGTGTCCCTCTACAGGGAAGCGCTTTCTGTTG
2386 mir-025-prec 0.33 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2588 mir-16-2No1 0.33 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2589 MPR95 left 0.28 TTGTTGGACACTCTTTCCCTGTTGCACTACTGTGGGCCTC
2588 mir-016b-chr3 0.29 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2591 Hcd948 right 0.27 TGATATAAATAGTCATCCTAATGGCATTAACAGCAGCACT
2475 mir-195-prec 0.35 TCTAGCAGCACAGAAATATTGGCACAGGGAAGCGAGTCTG
2390 mir-093-prec-7.1 = 093 - 1 0.38 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.42 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.37 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2596 mir-519c/526c 0.27 TCTCAGCCTGTGACCCTCTAGAGGGAAGCGCTTTCTGTTG
2578 mir-200a-prec 0.29 GTCTCTAATACTGCCTGGTAATGATGACGGCGGAGCCCTG
2598 mir-016a-chr13 0.29 CAATGTCAGCAGTGCCTTAGCAGCACGTAAATATTGGCGT
2393 mir-018-prec 0.41 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.39 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 98
pXD101 HDAC inhibitors microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.42 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2430 mir-123-precNo2 0.31 TGTGACACTTCAAACTCGTACCGTGAGTAATAATGCGCCG
2391 mir-106aNo1 0.36 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2414 mir-20bNo1 0.36 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2572 mir-017-precNo2 0.32 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.42 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.3 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir-092-prec-13 = 092-1No2 0.31 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
2609 mir-122a-prec 0.29 CCTTAGCAGAGCTGTGGAGTGTGACAATGGTGTTTGTGTC
2447 Hcd783 left 0.27 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2382 MPR216 left 0.29 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2383 mir-019b-1-prec 0.41 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.46 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2451 mir-128b-precNo1 0.39 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2386 mir-025-prec 0.45 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2616 Hcd511 right 0.26 TACCTCAGAAGCCTCACTCAACCCTCTCCCGCTGAGTCTC
2390 mir-093-prec-7.1 = 093-1 0.45 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.5 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.5 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.26 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2301 mir-223-prec 0.26 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2393 mir-018-prec 0.48 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.52 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 99
5-Fluorouracil microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2378 mir-096-prec-7No2 0.27 TGGCCGATTTTGGCACTAGCACATTTTTGCTTGTGTCTCT
2625 mir-429No1 0.25 CTAATACTGTCTGGTAAAACCGTCCATCCGCTGCCTGATC
2626 Hcd693 right 0.25 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
2500 HPR214 right 0.27 AGCAAAAGCTATTATTTGCCCTTGATGAGCCAATCAGATG
2628 Hcd586 left 0.26 GTCCTGTCTAAAGGAAGAAGTTTGTTCTACTGTAAACAGT
2517 Hcd249 right 0.26 CAGGTACATGTTGATCAGCAGGGGCTGGGAGGCGCCGCTC
2520 Hcd689 right 0.27 GTACATCTGGATGTAGTTGTGCTGCAGCTGCTTCTGGTAG
2631 mir-194-2No1 0.25 TGGTTCCCGCCCCCTGTAACAGCAACTCCATGTGGAAGTG
2524 Hcd581 right 0.26 AGGAGATATGCCAAGATATATTCACAGCTTTATATACACA
2528 Hcd270 right 0.3 AAATGTTGTTATAGTATCCCACCTACCCTGATGTATCTTT
2386 mir-025-prec 0.27 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2635 Hcd340 left 0.27 GGACAATTCAACAGTGGTGAGTCACTTCGCCACTTTTCAG
2283 mir-007-1-prec 0.27 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2390 mir-093-prec-7.1 = 093-1 0.25 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.26 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2287 Hcd794 right 0.27 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2394 mir-020-prec 0.26 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
2410 mir-4323p 0.26 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 100
Radiation microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2642 mir-136-precNo2 0.3 TGAGCCCTCGGAGGACTCCATTTGTTTTGATGATGGATTC
2643 Hcd570 right 0.26 GCCCAACAGAACAACTTGTTTCTCCAGAGCCTGAGGTTTA
2644 Hcd873 left 0.26 TCTTCTGACAATGAAGGTAGGCGGACAACGAGGAGATTGC
2645 Hcd282PO right 0.26 GAAGACGGACTTGGTTCCGTTTGACCAGCCAGAGCAGGGG
2646 Hcd799 left 0.25 GTCCGGCGCGAGTGGAGCTGTTGTAAAATGGCGGCCGAAG
2344 Hcd829 right 0.39 AAAATGGCGGCGGGAAAAGCGAGCGGCGAGAGCGAGGAGG
2347 Hcd210_HPR205 right 0.32 CGAAACATTCGCGGTGCACTTCTTTTTCAGTATCCTATTC
2649 mir-219-prec 0.26 ATTGTCCAAACGCAATTCTCGAGTCTATGGCTCCGGCCGA
2650 mir-202* 0.31 CCGCCCGCCGTTCCTTTTTCCTATGCATATACTTCTTTGA
2651 mir-429No2 0.42 CACCGCCGGCCGATGGGCGTCTTACCAGACATGGTTAGAC
2626 Hcd693 right 0.32 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
2653 mir-022-prec 0.34 TGTCCTGACCCAGCTAAAGCTGCCAGTTGAAGAACTGTTG
2654 NPR88 right 0.32 CTTACCCTGGTGCGTGGGGCCGCAGGGCTAACACCAAAAA
2655 mir-198-prec 0.39 TCATTGGTCCAGAGGGGAGATAGGTTCCTGTGATTTTTCC
2656 mir-199b-precNo1 0.29 GTCTGCACATTGGTTAGGCTGGGCTGGGTTAGACCCTCGG
2324 Hcd145 left 0.26 AAAAATCCCAGCGGCCACCTTTCCTCCCTGCCCCATTGGG
2658 mir-124a-2-prec 0.34 TTAAGGCACGCGGTGAATGCCAAGAGCGGAGCCTACGGCT
2659 mir-138-2-prec 0.39 AGCTGGTGTTGTGAATCAGGCCGACGAGCAGCGCATCCTC
2660 Hcd960 left 0.29 CTCAGTCTGCGGGCCCCGAGGAGGGTTGTGGGCCCTTTTT
2661 Hcd869 left 0.31 CGAGAGGCACTTTGTACTTCTGCCAGGAGACCATATGATA
2662 Hcd384 left 0.41 TTACCCAGCCGGGCCGCCAACACCAGATCCTTCTCCTTCT
2663 mir-027b-prec 0.31 CCGCTTTGTTCACAGTGGCTAAGTTCTGCACCTGAAGAGA
2664 Hcd444 right 0.31 GTATATGTGTGTGTGTGTGTGTGTGTGTGTGTGTGTGTGT
2631 mir-194-2No1 0.3 TGGTTCCCGCCCCCTGTAACAGCAACTCCATGTGGAAGTG
2369 mir-197-prec 0.44 TAAGAGCTCTTCACCCTTCACCACCTTCTCCACCCAGCAT
2326 Hcd913 right 0.39 CAAACATCATGTGACGTCTGTGGAGCGGCGGCGGCGGCGG
2327 HPR163 left 0.39 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2310 mir-138-1-prec 0.25 AGCTGGTGTTGTGAATCAGGCCGTTGCCAATCAGAGAACG
2670 mir-010a-precNo1 0.25 GTCTGTCTTCTGTATATACCCTGTAGATCCGAATTTGTGT
2671 mir-023b-prec 0.34 AATCACATTGCCAGGGATTACCACGCAACCACGACCTTGG
2672 mir-193bNo2 0.35 CTGTGGTCTCAGAATCGGGGTTTTGAGGGCGAGATGAGTT
2285 Hcd654 left 0.43 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2674 Hcd542 left 0.26 ATCTCAGTAGCCAATATTTTTCTCTGCTGGTATCAAATGA
2558 mir-199a-2-prec 0.28 TCGCCCCAGTGTTCAGACTACCTGTTCAGGACAATGCCGT
2676 mir-214-prec 0.43 TGTACAGCAGGCACAGACAGGCAGTCACATGACAACCCAG
2677 Hcd608 right 0.31 CTTGTGTTTTCACAGCAGCCACAGGCCCTACATCCTTCCT
2678 Hcd684 right 0.28 AGAAGGCGCTCCCTGCTAGCCCGGCTCTGTTCTAATTATA
2561 mir-145-prec 0.4 CCTCACGGTCCAGTTTTCCCAGGAATCCCTTAGATGCTAA
2680 mir-023a-prec 0.37 TCCTGTCACAAATCACATTGCCAGGGATTTCCAACCGACC
2681 mir-024-2-prec 0.32 AGTTGGTTTGTGTACACTGGCTCAGTTCAGCAGGAACAGG
2562 mir-199a-1-prec 0.29 GCCAACCCAGTGTTCAGACTACCTGTTCAGGAGGCTCTCA
TABLE 101
5-Aza-2′-deoxycytidine (decitabine) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2412 mir-096-prec-7No1 0.36 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2684 Hcd605 right 0.25 GGTTAAGACTCTAACAAACGAGTTGTGAATTGTAGCAATG
2414 mir-20bNo1 0.3 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2686 miR-373*No1 0.26 GGGATACTCAAAATGGGGGCGCTTTCCTTTTTGTCTGTAC
2325 HUMTRAB 0.3 ATGGTAGAGCGCTCGCTTTGCTTGCGAGAGGTAGCGGGAT
2383 mir-019b-1-prec 0.25 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2327 HPR163 left 0.31 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2690 mir-371No1 0.25 ACTTTCTGCTCTCTGGTGAAAGTGCCGCCATCTTTTGAGT
2386 mir-025-prec 0.29 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2692 mir-18bNo2 0.27 AGCAGCTTAGAATCTACTGCCCTAAATGCCCCTTCTGGCA
2390 mir-093-prec-7.1 = 093-1 0.28 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.29 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.29 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2394 mir-020-prec 0.29 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 102
Idarubicin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.33 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2367 mir-483No1 0.3 ATCACGCCTCCTCACTCCTCTCCTCCCGTCTTCTCCTCTC
2699 MPR74 left 0.27 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
2609 mir-122a-prec 0.27 CCTTAGCAGAGCTGTGGAGTGTGACAATGGTGTTTGTGTC
2433 ath-MIR180aNo2 0.29 TGAGAATCTTGATGATGCTGCATCGGCAATCAACGACTAT
2451 mir-128b-precNo1 0.26 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2703 Hcd923 left 0.25 TGGGAACCTTGTTAAAATGCAGATTCTGATTCTCAGGTCT
2391 mir-106-prec-X 0.25 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2299 mir-342No1 0.36 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.34 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.25 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2301 mir-223-prec 0.36 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.26 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.29 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 103
Melphalan microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2711 mir-124a-3-prec 0.32 TTAAGGCACGCGGTGAATGCCAAGAGAGGCGCCTCCGCCG
2712 mir-181a-precNo1 0.28 TCAGAGGACTCCAAGGAACATTCAACGCTGTCGGTGAGTT
2713 Hcd773 left 0.26 CTTCCTCCCTGGGCATCTCTAGCACAGGGGATCCCCAAAC
2714 Hcd683 left 0.25 CTATGACAGAAGGTACTCTGTGGGAGGGAGGAGATAATAG
2715 Hcd796 left 0.29 GGTGGGATTACCCGGCTGCCGCTGTCGCCTGGATGGTCTC
2290 HUMTRF 0.44 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2305 HUMTRS 0.27 TCTAGCGACAGAGTGGTTCAATTCCACCTTTCGGGCGCCA
2718 mir-181b-2No1 0.25 CTGATGGCTGCACTCAACATTCATTGCTGTCGGTGGGTTT
2719 Hcd294 left 0.26 TTATCATAAAATAATCACAGCCCTCAGGTGCTGTGAGGCA
2414 mir-20bNo1 0.27 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2571 mir-181dNo1 0.27 GAGGTCACAATCAACATTCATTGTTGTCGGTGGGTTGTGA
2306 mir-213-precNo1 0.4 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2407 Hcd148_HPR225left 0.29 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2294 mir-515-15p 0.34 GATCTCATGCAGTCATTCTCCAAAAGAAAGCACTTTCTGT
2398 mir-181b-precNo1 0.43 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2447 Hcd783 left 0.26 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2325 HUMTRAB 0.29 ATGGTAGAGCGCTCGCTTTGCTTGCGAGAGGTAGCGGGAT
2728 HUMTRN 0.27 CAATCGGTTAGCGCGTTCGGCTGTTAACCGAAAGGTTGGT
2729 mir-181b-1No1 0.31 TTTAAAAGGTCACAATCAACATTCATTGCTGTCGGTGGGT
2296 mir-124a-1-prec1 0.31 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2731 mir-367No1 0.26 TCTGTTGAATATAAATTGGAATTGCACTTTAGCAATGGTG
2451 mir-128b-precNo1 0.38 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2360 Hcd43 8right 0.25 GTGTTTATTTGAATCTCACATCGCTCATAAGAATACACGC
2386 mir-025-prec 0.3 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2735 mir-216-precNo1 0.35 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2317 Hcd731 left 0.26 AATTGTGACAACTGAGTGGGAGGTTTGTGTGATGATTATC
2390 mir-093-prec-7.1 = 093-1 0.25 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.27 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2299 mir-342No1 0.36 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.53 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.32 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2342 HUMTRV1A 0.25 ACGCGAAAGGTCCCCGGTTCGAAACCGGGCGGAAACACCA
2301 mir-223-prec 0.46 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.45 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.3 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 104
IL4-PR3B fusion protein microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2344 Hcd829 right 0.28 AAAATGGCGGCGGGAAAAGCGAGCGGCGAGAGCGAGGAGG
2369 mir-197-prec 0.28 TAAGAGCTCTTCACCCTTCACCACCTTCTCCACCCAGCAT
2327 HPR163 left 0.28 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2448 mir-150-prec 0.47 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
TABLE 105
Valproic acid (VPA) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2750 mir-034precNo1 0.26 GAGTGTTTCTTTGGCAGTGTCTTAGCTGGTTGTTGTGAGC
2751 Hcd255 left 0.28 CTAGCTCCGTTCGTGATCCGGGAGCCTGGTGCCAGCGAGA
2752 Hcd712 right 0.27 GAAGATCGGTTGTCATCTGGTCTGGTCAGCCCGGCCCCGA
2753 Hcd965 left 0.26 TGTTAAGTGGAAAAGCCTCCAGGAACGTGGCAGAAAAAGG
2754 Hcd891 right 0.29 GCAACGGCCTGATTCACAACACCAGCTGCCCCACCACACC
2347 Hcd210_HPR205 right 0.31 CGAAACATTCGCGGTGCACTTCTTTTTCAGTATCCTATTC
2651 mir-429No2 0.33 CACCGCCGGCCGATGGGCGTCTTACCAGACATGGTTAGAC
2757 Hcd753 left 0.27 GACCTGATTCCCATCTTTGTATTTGGCGACCACCCGACTG
2626 Hcd693 right 0.38 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
2333 MPR203 left 0.25 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2760 Hcd704 left 0.4 TCTGTATTTAATTTGGCTCAGCCGGGAAGATTTTTGGCTC
2761 Hcd863PO right 0.3 TTGCAGAGCCTAAGACACAGGCCCAGAGAGGCAGTGATCG
2609 mir-122a-prec 0.29 CCTTAGCAGAGCTGTGGAGTGTGACAATGGTGTTTGTGTC
2763 Hcd760 left 0.35 TGTGGTCACGTTTCTCCCTCTCTGCTGGCCCCCATCTGTC
2764 Hcd338 left 0.35 CTTCTCCTCCTGTTCGCCGCAGGCGCCCGTCCCAGTAGTC
2765 HPR213 right 0.33 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCAA
2766 Hcd852 right 0.26 AAAAGTAAACAACAATTTGCCGCTGCCAGCCTCCCATTAG
2767 Hcd366 left 0.28 ATACTAGATTAAATTTCAGCCCCGGGCCAATCTGTCAAAG
2768 MPR103 right 0.27 GAGGTGTTTGTGCTCCACTCGGCTCCCTTGGTTACATAAC
2769 Hcd669 right 0.27 ATGTTTAACAGTCCAGGTTTTGTAGAATATGTGGTGGACC
2770 mir-188-prec 0.27 TCACATCCCTTGCATGGTGGAGGGTGAGCTTTCTGAAAAC
TABLE 106
All-trans retinoic acid (ATRA) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2771 Hcd257 left 0.42 CTTCTTGTATAAGCACTGTGCTAAAATTGCAGACACTAGG
2772 mir-148-prec 0.45 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2773 Hcd512 left 0.28 CTGCGCTCTCGGAAATGACTCGCTCCAATCCCGCTTCGCG
2774 HPR227 right 0.25 CAGTGCAATGATATTGTCAAAGCATCTGGGACCAGCCTTG
2775 Hcd421 right 0.37 AGTAAACAATGTCGGCTTTCCGCCTCCTCCCCTGCCATCC
2333 MPR203 left 0.39 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2777 mir-017-precNo1 0.26 GCATCTACTGCAGTGAAGGCACTTGTAGCATTATGGTGAC
2778 mir-219-2No1 0.26 CTCAGGGGCTTCGCCACTGATTGTCCAAACGCAATTCTTG
2779 mir-328No1 0.3 GAAAGTGCATACAGCCCCTGGCCCTCTCTGCCCTTCCGTC
2447 Hcd783 left 0.31 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2781 Hcd181 left 0.32 TTGGCGTCCTTGTCTCTCTCTCCCCTGCCCAGTGGCCTCC
2765 HPR213 right 0.3 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCAA
2783 mir-191-prec 0.31 CAACGGAATCCCAAAAGCAGCTGTTGTCTCCAGAGCATTC
2784 mir-375 0.31 TTTTGTTCGTTCGGCTCGCGTGAGGCAGGGGCGGCCTCTC
2785 mir-212-precNo2 0.26 CGGACAGCGCGCCGGCACCTTGGCTCTAGACTGCTTACTG
2326 Hcd913 right 0.34 CAAACATCATGTGACGTCTGTGGAGCGGCGGCGGCGGCGG
2330 Hcd716 right 0.48 CAATAAATGTGCCTATAAAGGCGCCGGCTCCGGGGCGCGG
2331 MPR207 right 0.3 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCTA
2333 HPR206 left 0.26 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2588 mir-016b-chr3 0.29 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2285 Hcd654 left 0.34 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2475 mir-195-prec 0.3 TCTAGCAGCACAGAAATATTGGCACAGGGAAGCGAGTCTG
2793 Hcd425 left 0.25 GGTTCTACTCTCTTACCCCTCCCCCACGTGGTTGTTGCTG
2772 mir-148aNo1 0.35 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2300 mir-142-prec 0.36 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2598 mir-016a-chr13 0.25 CAATGTCAGCAGTGCCTTAGCAGCACGTAAATATTGGCGT
TABLE 107
Cytoxan microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2797 Hcd99 right 0.25 CAATCCTGGCTGCAGGCATATTTGCATATTGGATGCTGTG
2798 mir-520c/526a 0.32 TCTCAGGCTGTCGTCCTCTAGAGGGAAGCACTTTCTGTTG
2783 mir-191-prec 0.32 CAACGGAATCCCAAAAGCAGCTGTTGTCTCCAGAGCATTC
2800 mir-205-prec 0.35 TCCTTCATTCCACCGGAGTCTGTCTCATACCCAACCAGAT
2784 mir-375 0.33 TTTTGTTCGTTCGGCTCGCGTGAGGCAGGGGCGGCCTCTC
2802 mir-423No1 0.29 CAAAAGCTCGGTCTGAGGCCCCTCAGTCTTGCTTCCTAAC
2803 mir-449No1 0.39 TGTGATGAGCTGGCAGTGTATTGTTAGCTGGTTGAATATG
2804 mir-196-2-precNo2 0.26 GCTGATCTGTGGCTTAGGTAGTTTCATGTTGTTGGGATTG
TABLE 108
Topotecan (Hycamtin) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.26 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2699 MPR74 left 0.29 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
2306 mir-213-precNo1 0.28 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2293 mir-155-prec 0.31 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2398 mir-181b-precNo1 0.31 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2299 mir-342No1 0.33 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2410 mir-4323p 0.28 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 109
Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza)
microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.38 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2483 mir-123-precNo1 0.31 GACGGGACATTATTACTTTTGGTACGCGCTGTGACACTTC
2814 mir-514-1No2 0.29 TGTCTGTGGTACCCTACTCTGGAGAGTGACAATCATGTAT
2413 mir-101-prec-9 0.25 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2772 mir-148-prec 0.36 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2391 mir-106aNo1 0.34 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2414 mir-20bNo1 0.41 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2819 Hcd781 right 0.32 AGTTTCTTTAATTAATGAAGTTTTTGGGTCTGCTCCACTT
2572 mir-017-precNo2 0.29 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.42 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.27 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir-092prec-13 = 092-1No2 0.28 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
2577 mir-107No1 0.29 GGCATGGAGTTCAAGCAGCATTGTACAGGGCTATCAAAGC
2579 mir-103-prec-5 = 103-1 0.32 TATGGATCAAGCAGCATTGTACAGGGCTATGAAGGCATTG
2382 MPR216 left 0.29 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2827 mir-29b-2 = 102prec7.1 = 7.2 0.27 AGTGATTGTCTAGCACCATTTGAAATCAGTGTTCTTGGGG
2383 mir-019b-1-prec 0.4 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2577 mir-107-prec-10 0.3 GGCATGGAGTTCAAGCAGCATTGTACAGGGCTATCAAAGC
2384 mir-135-2-prec 0.37 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2524 Hcd581 right 0.28 AGGAGATATGCCAAGATATATTCACAGCTTTATATACACA
2585 mir-103-2-prec 0.29 GTAGCATTCAGGTCAAGCAACATTGTACAGGGCTATGAAA
2526 Hcd230 left 0.27 CATTCTCTACAAGCATATGGCCTTGGGACATTAAGATGGC
2386 mir-025-prec 0.4 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2835 mir-208-prec 0.31 ACCTGATGCTCACGTATAAGACGAGCAAAAAGCTTGTTGG
2692 mir-18bNo2 0.31 AGCAGCTTAGAATCTACTGCCCTAAATGCCCCTTCTGGCA
2390 mir-093-prec-7.1 = 093-1 0.39 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.48 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.37 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.28 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2393 mir-018-prec 0.44 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.48 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 110
Depsipeptide (FR901228) microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2320 Hcd415 right 0.27 GATGTTTGGGAAACAATGGGAGTGAGAGAATGGGAGAGCT
2308 mir-147-prec 0.27 GACTATGGAAGCCAGTGTGTGGAAATGCTTCTGCTAGATT
2845 mir-033b-prec 0.34 GTGCATTGCTGTTGCATTGCACGTGTGTGAGGCGGGTGCA
2846 Hcd778 right 0.34 CAGAGGGGAGGCCCAGAGGAGAGGGAAGCTTGGGCAAAGG
2847 mir-127-prec 0.25 TCGGATCCGTCTGAGCTTGGCTGGTCGGAAGTCTCATCAT
2848 mir-324No1 0.28 TGGAGACCCACTGCCCCAGGTGCTGCTGGGGGTTGTAGTC
2287 Hcd794 right 0.35 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2850 Hcd634 left 0.27 CTGCTCCGCTCAGAGCCTTTTCCTCTCCACTTCCTGTTCA
TABLE 111
Bortezomib microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2304 MPR121 left 0.31 CACCTGGCTCTGAGAACTGAATTCCATAGGCTGTGAGCTC
2852 Hcd115 left 0.27 CTCTGTGGCCATTTCGGTTTTTCCAGTCCGATGCCCCTGA
2626 Hcd693 right 0.28 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
2760 Hcd704 left 0.25 TCTGTATTTAATTTGGCTCAGCCGGGAAGATTTTTGGCTC
2855 HPR100 right 0.28 GGTGTTTGTGCTCCACTCAGCTCCCTTGGTTACATAACAG
2763 Hcd760 left 0.26 TGTGGTCACGTTTCTCCCTCTCTGCTGGCCCCCATCTGTC
2308 mir-147-prec 0.3 GACTATGGAAGCCAGTGTGTGGAAATGCTTCTGCTAGATT
2845 mir-033b-prec 0.29 GTGCATTGCTGTTGCATTGCACGTGTGTGAGGCGGGTGCA
2312 mir-146-prec 0.33 TGAGAACTGAATTCCATGGGTTGTGTCAGTGTCAGACCTC
2860 Hcd142 right 0.3 TAAATGTGTAATTTCTCCCTTGACGGCCCCCGGCCGCTGG
2861 mir-501No2 0.33 ATGCAATGCACCCGGGCAAGGATTCTGAGAGGGTGAGCCC
2330 Hcd716 right 0.26 CAATAAATGTGCCTATAAAGGCGCCGGCTCCGGGGCGCGG
2331 MPR207 right 0.27 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCTA
2864 Hcd777 left 0.26 CAGGTGGGTGCTGAGGCCGCGTTGTTGCTTGAAGCTAGCC
2865 mir-204-precNo2 0.27 AGGCTGGGAAGGCAAAGGGACGTTCAATTGTCATCACTGG
2314 mir-146bNo1 0.26 CACCTGGCACTGAGAACTGAATTCCATAGGCTGTGAGCTC
2616 Hcd511 right 0.29 TACCTCAGAAGCCTCACTCAACCCTCTCCCGCTGAGTCTC
2316 Hcd397 left 0.28 GTGTGTATACTTATGTGTGTGTATGTGTGAGTGTGAATAT
2869 MPR130 right 0.33 CAATCACAGATAGCACCCCTCACCTTGAGCCCATTTTCAC
2337 Hcd782 left 0.28 GGAGCCCTGTCTGCAAAGAGTGGTGCGTGTGCGTGTGTGA
2871 mir-324No2 0.28 CTGACTATGCCTCCCCGCATCCCCTAGGGCATTGGTGTAA
2287 Hcd794 right 0.34 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2288 Hcd739 right 0.29 TATTAGCTGAGGGAGGGCTGGAGGCGGCTGCATTCCGACT
TABLE 112
Leukeran microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092prec-X = 092-2 0.39 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2412 mir-096-prec-7No1 0.26 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2430 mir-123-precNo2 0.32 TGTGACACTTCAAACTCGTACCGTGAGTAATAATGCGCCG
2877 MPR249 left 0.26 TCGGTTTGGTTCAGCTGGTATGCTTTCCAGTATCTCATTC
2486 HPR232 right 0.28 TGAATTATTGCACAATAAATTCATGCCCTGTTGTGTCTTA
2413 mir-101-prec-9 0.4 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2391 mir-106aNo1 0.31 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2414 mir-20bNo1 0.38 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2882 Hcd861 right 0.25 AAGGTCTGGATTGATCGTACTGCTTTCTGAAAGGTAAAAA
2572 mir-017-precNo2 0.26 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.33 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.3 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2506 Hcd102 left 0.26 ACTGGAATTATGTTTTATCTTAAGTCCACACTGGATCCTC
2382 MFR216 left 0.32 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2888 Hcd975 left 0.25 GGTTTTGTGTTTTTGTAAACAGCAGAAGGTATTAGTCCAT
2383 mir-019b-1-prec 0.3 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.38 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2524 Hcd581 right 0.26 AGGAGATATGCCAAGATATATTCACAGCTTTATATACACA
2525 Hcd536_HPR104 right 0.25 GCTGCTCTGCTGAGGGGCTGGACTCTGTCCAGAAGCACCA
2893 mir-128b-precNo2 0.25 GGGGGCCGATACACTGTACGAGAGTGAGTAGCAGGTCTCA
2332 HSTRNL 0.37 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2386 mir-025-prec 0.47 ACGCTGCCCTGGGCATTGCACTTCTCTCGGTCTGACAGTG
2692 mir-18bNo2 0.27 AGCAGCTTAGAATCTACTGCCCTAAATGCCCCTTCTGGCA
2897 HPR262 left 0.26 TCAGTTTGGTTCAGCTGGTATGCTTTCCAGTATCTCATTC
2298 Hcd923 right 0.33 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2899 Hcd434 right 0.3 CACTTTTTCCTTTGTGGAAATCCTGGGTGACATCACCTCC
2900 Hcd658 right 0.28 GACTGCAGAGCAAAAGACACGATGGGTGTCTATTGTTTTC
2901 HPR129 left 0.29 TTTTCCTGCTTGATTTGCTTAATGGAAGCTGACAGTGAAG
2389 mir-380-5p 0.32 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCCCTAT
2390 mir-093-prec-7.1 = 093-1 0.45 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.5 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2544 Hcd627 left 0.31 GCATTAGGGAGAATAGTTGATGGATTACAAATCTCTGCAT
2300 mir-142-prec 0.33 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2393 mir-018-prec 0.46 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.5 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 113
Fludarabine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2713 Hcd773 left 0.26 CTTCCTCCCTGGGCATCTCTAGCACAGGGGATCCCCAAAC
2910 Hcd248 right 0.33 CATTATGCAAATGGTATGAGAGGAAAATTAGGCAATAAGG
2571 mir-181dNo1 0.34 GAGGTCACAATCAACATTCATTGTTGTCGGTGGGTTGTGA
2699 MPR74 left 0.3 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
2306 mir-213-precNo1 0.37 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2293 mir-155-prec 0.32 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2291 MPR197 right 0.29 TATTTATTACAAGGTCCTTCTTCCCCGTAAAACTTTGTCC
2398 mir-181b-precNo1 0.26 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2827 mir-29b-2 = 102prec7.1 = 7.2 0.32 AGTGATTGTCTAGCACCATTTGAAATCAGTGTTCTTGGGG
2918 mir-029c-prec 0.33 TTTTGTCTAGCACCATTTGAAATCGGTTATGATGTAGGGG
2919 Hcd318 right 0.32 CAAGTGGTTAATTGAGCCCACAAGTGACCTACTCAATCAG
2451 mir-128b-precNo1 0.25 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2921 mir-130a-precNo2 0.27 TGTCTGCACCTGTCACTAGCAGTGCAATGTTAAAAGGGCA
2311 mir-140No2 0.26 TTCTACCACAGGGTAGAACCACGGACAGGATACCGGGGCA
2588 mir-16-2No1 0.31 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2924 mir-526a-2No1 0.26 GATCTCGTGCTGTGACCCTCTAGAGGGAAGCACTTTCTGT
2588 mir-016b-chr3 0.3 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2475 mir-195-prec 0.34 TCTAGCAGCACAGAAATATTGGCACAGGGAAGCGAGTCTG
2735 mir-216-precNo1 0.25 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2299 mir-342No1 0.26 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2827 mir-29b-1No1 0.34 AGTGATTGTCTAGCACCATTTGAAATCAGTGTTCTTGGGG
2544 Hcd627 left 0.33 GCATTAGGGAGAATAGTTGATGGATTACAAATCTCTGCAT
2931 mir-102-prec-1 0.33 TCTTTGTATCTAGCACCATTTGAAATCAGTGTTTTAGGAG
2300 mir-142-prec 0.32 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.34 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2934 let-7f-2-prec2 0.26 TGAGGTAGTAGATTGTATAGTTTTAGGGTCATACCCCATC
2598 mir-016a-chr13 0.36 CAATGTCAGCAGTGCCTTAGCAGCACGTAAATATTGGCGT
TABLE 114
Vinblastine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2287 Hcd794 right 0.33 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2302 Hcd754 left 0.25 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
TABLE 115
Busulfan microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2378 mir-096-prec-7No2 0.27 TGGCCGATTTTGGCACTAGCACATTTTTGCTTGTGTCTCT
2711 mir-124a-3-prec 0.25 TTAAGGCACGCGGTGAATGCCAAGAGAGGCGCCTCCGCCG
2413 mir-101-prec-9 0.25 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2752 Hcd712 right 0.27 GAAGATCGGTTGTCATCTGGTCTGGTCAGCCCGGCCCCGA
2626 Hcd693 right 0.26 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
2778 mir-219-2No1 0.25 CTCAGGGGCTTCGCCACTGATTGTCCAAACGCAATTCTTG
2324 Hcd145 left 0.29 AAAAATCCCAGCGGCCACCTTTCCTCCCTGCCCCATTGGG
2293 mir-155-prec 0.29 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2765 HPR213 right 0.3 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCAA
2785 mir-212-precNo2 0.34 CGGACAGCGCGCCGGCACCTTGGCTCTAGACTGCTTACTG
2326 Hcd913 right 0.33 CAAACATCATGTGACGTCTGTGGAGCGGCGGCGGCGGCGG
2330 Hcd716 right 0.51 CAATAAATGTGCCTATAAAGGCGCCGGCTCCGGGGCGCGG
2331 MFR207 right 0.26 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCTA
2951 Hcd559 right 0.33 TTCTTTGTCTATACATTTCCTAGATTTCTATGCAGTTGGG
2285 Hcd654 left 0.28 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2288 Hcd739 right 0.27 TATTAGCTGAGGGAGGGCTGGAGGCGGCTGCATTCCGACT
2300 mir-142-prec 0.4 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
TABLE 116
Dacarbazine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.25 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2430 mir-123-precNo2 0.28 TGTGACACTTCAAACTCGTACCGTGAGTAATAATGCGCCG
2413 mir-101-prec-9 0.29 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2958 Hcd517 right 0.3 GAGGGATTACAGATTAACTCCCACTTCTCCAGACTCAGAA
2715 Hcd796 left 0.37 GGTGGGATTACCCGGCTGCCGCTGTCGCCTGGATGGTCTC
2960 Hcd749 right 0.28 CGAGGAGGAGGTGACTGCTGTGGATGGTTATGAGACAGAC
2961 Hcd674 left 0.25 CTCCAGTGTGGTGTGCCTGCCCCCTTCCGTCATTGCTGTG
2381 mir-019b-2-prec 0.27 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.29 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir092-prec-13 = 092-1No2 0.33 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
2658 mir-124a-2-prec 0.29 TTAAGGCACGCGGTGAATGCCAAGAGCGGAGCCTACGGCT
2966 mir-143-prec 0.36 CTGGTCAGTTGGGAGTCTGAGATGAAGCACTGTAGCTCAG
2967 mir-516-43p 0.28 AAAGAAAAGAAAGTGCTTCCTTTCAGAGGGTTACTCTTTG
2735 mir-216-precNo1 0.31 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2317 Hcd731 left 0.26 AATTGTGACAACTGAGTGGGAGGTTTGTGTGATGATTATC
2391 mir-106-prec-X 0.26 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.48 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.48 CAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.32 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2393 mir-018-prec 0.27 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
TABLE 117
Oxaliplatin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.36 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2772 mir-148-prec 0.27 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2414 mir-20bNo1 0.27 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2380 mir-007-2-precNo2 0.28 GGACCGGCTGGCCCCATCTGGAAGACTAGTGATTTTGTTG
2572 mir-017-precNo2 0.28 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.32 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2763 Hcd760 left 0.27 TGTGGTCACGTTTCTCCCTCTCTGCTGGCCCCCATCTGTC
2447 Hcd783 left 0.36 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2382 MPR216 left 0.26 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
278 mir-375 0.33 TTTTGTTCGTTCGGCTCGCGTGAGGCAGGGGCGGCCTCTC
2383 mir-019b-1-prec 0.36 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.32 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2448 mir-150-prec 0.25 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
2451 mir-128b-precNo1 0.33 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2989 mir-499No2 0.26 GTGAACATCACAGCAAGTCTGTGCTGCTTCCCGTCCCTAC
2386 mir-025-prec 0.38 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2283 mir-007-1-prec 0.32 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2388 mir-019a-prec 0.33 TGTAGTTGTGCAAATCTATGCAAAACTGATGGTGGCCTGC
2390 mir-093-prec-7.1 = 093-1 0.46 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.45 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.41 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.34 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2393 mir-018-prec 0.4 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.44 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
2453 mir-484 0.33 GTCAGGCTCAGTCCCCTCCCGATAAACCCCTAAATAGGGA
TABLE 118
Hydroxyurea microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2771 Hcd257 left 0.34 CTTCTTGTATAAGCACTGTGCTAAAATTGCAGACACTAGG
2321 Hcd768 right 0.26 GCCCTGGCGGAACGCTGAGAAGACAGTCGAACTTGACTAT
2715 Hcd796 left 0.25 GGTGGGATTACCCGGCTGCCGCTGTCGCCTGGATGGTCTC
2290 HUMTRF 0.48 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2305 HUMTRS 0.3 TCTAGCGACAGAGTGGTTCAATTCCACCTTTCGGGCGCCA
2699 MPR74 left 0.28 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
2306 mir-213-precNo1 0.29 AACATTCATTGCTGTCGGTGGGTTGAACTGTCTGGACAAG
2293 mir-155-prec 0.35 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
3008 Hcd763 right 0.25 GGTGCACTCTAAATTCCTGTCCCTGCGGAAGGCTGACTAA
2398 mir-181b-precNo1 0.28 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2433 ath-MIR180aNo2 0.26 TGAGAATCTTGATGATGCTGCATCGGCAATCAACGACTAT
2735 mir-216-precNo1 0.37 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2299 mir-342No1 0.31 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.49 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.31 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2342 HUMTRV1A 0.26 ACGCGAAAGGTCCCCGGTTCGAAACCGGGCGGAAACACCA
2301 mir-223-prec 0.59 CAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.46 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.26 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 119
Tegafur microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2431 Hcd257 right 0.26 CTTGGTTTTTGCAATAATGCTAGCAGAGTACACACAAGAA
3020 Hcd946 left 0.26 CACAGGATTTCAGGGGAGAAACGGTGGATTTTCACAAGAG
3021 Hcd503 left 0.3 GAGATGAGGTAGCTGCCAGGTGCCATGGGGGTATAGGTGA
2625 mir-429No1 0.25 CTAATACTGTCTGGTAAAACCGTCCATCCGCTGCCTGATC
2626 Hcd693 right 0.32 AGGCTTTGTGCGCGCATTAAAGCTCGCCGGACCCCCGACC
3024 miR-373*No1 0.33 GGGATACTCAAAATGGGGGCGCTTTCCTTTTTGTCTGTAC
3025 Hcd738 left 0.28 GAAAAACTTAAGATTCCCTCTCGGCCCTCATTTTTAGCTG
2779 mir-328No1 0.33 GAAAGTGCATACAGCCCCTGGCCCTCTCTGCCCTTCCGTC
2447 Hcd783 left 0.36 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
3028 Hcd181 right 0.34 GCTCACTGGGCAGGAGCCCTAATCGGATTCGACAGCTGAG
3029 Hcd631 left 0.38 CAGATATTTTCTCAGGCAATCCTCAGCCACAGCCTTCTTG
3030 Hcd279 left 0.25 CGGACTAACACTCCGCGGGTGTTTCCATGGAGACCGAGGC
2631 mir-194-2No1 0.3 TGGTTCCCGCCCCCTGTAACAGCAACTCCATGTGGAAGTG
2369 mir-197-prec 0.38 TAAGAGCTCTTCACCCTTCACCACCTTCTCCACCCAGCAT
2327 HPR163 left 0.39 GCTGCCCCCTCCCTTAGCAACGTGGCCCCGGCGTTCCAAA
2448 mir-150-prec 0.32 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
3035 Hcd323 left 0.26 GTTGTAGCATGTGGTTGTATTAATGAACGTTACAGGAGAG
2585 mir-103-2-prec 0.28 GTAGCATTCAGGTCAAGCAACATTGTACAGGGCTATGAAA
3037 Hcd243 right 0.27 TATTATACATCATTTCCCATCAATCGACGAACTAAAGCCT
2408 Hcd938 right 0.27 ATTCCCTGCATCACTCTCATGAAATGGCTGAGAAAGTGAG
2386 mir-025-prec 0.29 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2283 mir-007-1-prec 0.36 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2284 MPR243 left 0.26 GTATTTACCTAGTTGTAATGTGGGTTGCCATGGTGTTTTG
2616 Hcd511 right 0.27 TACCTCAGAAGCCTCACTCAACCCTCTCCCGCTGAGTCTC
2285 Hcd654 left 0.26 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2558 mir-199a-2-prec 0.3 TCGCCCCAGTGTTCAGACTACCTGTTCAGGACAATGCCGT
3045 mir-214-prec 0.27 TGTACAGCAGGCACAGACAGGCAGTCACATGACAACCCAG
2390 mir-093-prec-7.1 = 093-1 0.33 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.27 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2287 Hcd794 right 0.41 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
3049 Hcd530 right 0.26 AAGGAAAATCAAACCCACAATGCTGAACACAACAATGACC
2341 HSHELA01 0.34 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2302 Hcd754 left 0.29 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.29 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 120
Daunorubicin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2321 Hcd768 right 0.25 GCCCTGGCGGAACGCTGAGAAGACAGTCGAACTTGACTAT
2290 HUMTRF 0.34 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2324 Hcd145 left 0.28 AAAAATCCCAGCGGCCACCTTTCCTCCCTGCCCCATTGGG
2298 Hcd923 right 0.27 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2735 mir-216-precNo1 0.27 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2390 mir-093-prec-7.1 = 093-1 0.25 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2299 mir-342No1 0.33 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2287 Hcd794 right 0.28 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2300 mir-142-prec 0.48 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.3 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2301 mir-223-prec 0.33 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.32 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
TABLE 121
Bleomycin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
3065 mir-125b-2-precNo2 0.29 ACCAGACTTTTCCTAGTCCCTGAGACCCTAACTTGTGAGG
2653 mir-022-prec 0.26 TGTCCTGACCCAGCTAAAGCTGCCAGTTGAAGAACTGTTG
3067 mir-125b-1 0.29 TCCCTGAGACCCTAACTTGTGATGTTTACCGTTTAAATCC
2293 mir-155-prec 0.38 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2309 mir-100No1 0.25 CCTGTTGCCACAAACCCGTAGATCCGAACTTGTGGTATTA
2355 mir-409-3p 0.27 GACGAATGTTGCTCGGTGAACCCCTTTTCGGTATCAAATT
2358 mir-495No1 0.31 GTGACGAAACAAACATGGTGCACTTCTTTTTCGGTATCAA
2558 mir-199a-2-prec 0.29 TCGCCCCAGTGTTCAGACTACCTGTTCAGGACAATGCCGT
2362 mir-382 0.28 GGTACTTGAAGAGAAGTTGTTCGTGGTGGATTCGCTTTAC
2319 mir-100-1/2-prec 0.26 TGAGGCCTGTTGCCACAAACCCGTAGATCCGAACTTGTGG
TABLE 122
Estramustine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2764 Hcd338 left 0.32 CTTCTCCTCCTGTTCGCCGCAGGCGCCCGTCCCAGTAGTC
3076 mir-099b-prec-19No1 0.25 GCCTTCGCCGCACACAAGCTCGTGTCTGTGGGTCCGTGTC
3077 mir-149-prec 0.34 CGAGCTCTGGCTCCGTGTCTTCACTCCCGTGCTTGTCCGA
TABLE 123
Chlorambucil microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2712 mir-181a-precNo1 0.26 TCAGAGGACTCCAAGGAACATTCAACGCTGTCGGTGAGTT
2466 mir-181c-precNo1 0.25 TGCCAAGGGTTTGGGGGAACATTCAACCTGTCGGTGAGTT
2290 HUMTRF 0.35 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2571 mir-181dNo1 0.26 GAGGTCACAATCAACATTCATTGTTGTCGGTGGGTTGTGA
2699 MPR74 left 0.28 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
2502 Hcd817 left 0.28 TAATGAGAATTATGTTTGCACATTGAGGCAGGATAAATCC
2306 mir-213-precNo1 0.42 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2293 mir-155-prec 0.33 TTAATGCTAATCGTGATAGGGGTTTTTGCCTCCAACTGAC
2407 Hcd148_HPR225left 0.29 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2294 mir-515-15p 0.27 GATCTCATGCAGTCATTCTCCAAAAGAAAGCACTTTCTGT
2398 mir-181b-precNo1 0.41 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2728 HUMTRN 0.27 CAATCGGTTAGCGCGTTCGGCTGTTAACCGAAAGGTTGGT
2451 mir-128b-precNo1 0.37 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2297 mir-450-2No1 0.29 GAAAGATGCTAAACTATTTTTGCGATGTGTTCCTAATATG
2735 mir-216-precNo1 0.29 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2299 mir-342No1 0.35 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.45 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.39 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.37 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.28 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 124
Mechlorethamine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2711 mir-124a-3-prec 0.33 TTAAGGCACGCGGTGAATGCCAAGAGAGGCGCCTCCGCCG
3020 Hcd946 left 0.3 CACAGGATTTCAGGGGAGAAACGGTGGATTTTCACAAGAG
2714 Hcd683 left 0.29 CTATGACAGAAGGTACTCTGTGGGAGGGAGGAGATAATAG
3101 HPR264 right 0.25 CAAATGGCGCATCAATGACTATCGCTCTTACAAAGCTCTT
3102 MPR185 right 0.3 CAGAACATGCAATGCAACTACAATGCACCACAGCTGCCCG
2290 HUMTRF 0.37 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
3104 Hcd294 left 0.25 TTATCATAAAATAATCACAGCCCTCAGGTGCTGTGAGGCA
3021 Hcd503 left 0.27 GAGATGAGGTAGCTGCCAGGTGCCATGGGGGTATAGGTGA
2414 mir-20bNo1 0.27 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2699 MPR74 left 0.25 CAAAGGTCACAATTAACATTCATTGTTGTCGGTGGGTTGT
3108 MPR234 right 0.28 GCTGACGTCACGGGCAGAATTGTCCCATTTAGGGATCCCG
3109 Hcd447 right 0.26 CTCAGGCCATTAACCTCAGTTGGTCACTAATCCCTAGGAA
3110 Hcd817 right 0.3 GAATCTTGCCCTTGGATGCATACTGTAATTTCCATTAAAG
2407 Hcd148_HPR225left 0.32 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2294 mir-515-15p 0.29 GATCTCATGCAGTCATTCTCCAAAAGAAAGCACTTTCTGT
3113 Hcd383 right 0.25 CTGATAGTACACGGGGCCAAAATAGATGTATGCTTCTAAG
2295 mir-181b-precNo2 0.31 ACCATCGACCGTTGATTGTACCCTATGGCTAACCATCATC
2447 Hcd783 left 0.33 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
3116 MPR224 left 0.34 TGAGGCCCTCTAGGCCGTGAATTAATGTGTCATAACTCAC
2512 HPR172 right 0.28 GTTTAAACAGCCAGTGCAAACATTTAGATCTGAGTCAAAA
2382 MPR216 left 0.32 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2728 HUMTRN 0.28 CAATCGGTTAGCGCGTTCGGCTGTTAACCGAAAGGTTGGT
3120 mir-321No1 0.3 TTGGCCTCCTAAGCCAGGGATTGTGGGTTCGAGTCCCACC
2519 HFR159 left 0.25 TCCGTCACTTGAACTGGCTGCCAGCGTTCACAGACAGCTG
3122 MPR228 left 0.29 TTTTTGCTCCCAGTCAGTAGGAAGATTGTTTCAAATCTGT
2433 ath-MIR180aNo2 0.31 TGAGAATCTTGATGATGCTGCATCGGCAATCAACGACTAT
2369 mir-197-prec 0.28 TAAGAGCTCTTCACCCTTCACCACCTTCTCCACCCAGCAT
2296 mir-124a-1-prec1 0.26 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2451 mir-128b-precNo1 0.31 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
3127 Hcd28_HPR39left 0.28 CTGACTTTCAGTTCCTATTTAAAATGTCTGAATTGGGAGC
2530 Hcd889 right 0.25 ATGCCTTGTGCTCTGTGCTAATTCAGAAGAATAAGCCTGT
3129 Hcd350 right 0.26 TAGCACTTAGCAGGTTGTATTATCATTGTCCGTGTCTATG
2386 mir-025-prec 0.31 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2835 mir-208-prec 0.27 ACCTGATGCTCACGTATAAGACGAGCAAAAAGCTTGTTGG
2297 mir-450-2No1 0.25 GAAAGATGCTAAACTATTTTTGCGATGTGTTCCTAATATG
2298 Hcd923 right 0.29 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2899 Hcd434 right 0.28 CACTTTTTCCTTTGTGGAAATCCTGGGTGACATCACCTCC
2901 HPR129 left 0.27 TTTTCCTGCTTGATTTGCTTAATGGAAGCTGACAGTGAAG
3136 HPR220 left 0.27 GGAGACACTGTAACAACATTTTACTCCTGACTGATTACAT
2389 mir-380-5p 0.3 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2390 mir-093-prec-7.1 = 093-1 0.29 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.3 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2299 mir-342No1 0.28 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.45 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.29 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2301 mir-223-prec 0.32 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.32 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2394 mir-020-prec 0.37 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
2410 mir-4323p 0.26 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 125
Streptozocin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2367 mir-483No1 0.2 ATCACGCCTCCTCACTCCTCTCCTCCCGTCTTCTCCTCTC
3148 Hcd631 right 0.21 AAAACCAAATGGCTGGCTACTCATGTACTGTTGAATGTCT
2370 mir-212-precNo1 0.24 CCTCAGTAACAGTCTCCAGTCACGGCCACCGACGCCTGGC
2408 Hcd938 right 0.21 ATTCCCTGCATCACTCTCATGAAATGGCTGAGAAAGTGAG
3151 MPR133 right 0.2 CTGTAGATACTTTCTCCCTGAGCCCCTCCTGCCCCCCTGC
2287 Hcd794 right 0.21 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
3153 Hcd438 left 0.24 GTTTATTTGAATGTGTGATGGGGAGGTCATCAAAATGAAC
3154 Hcd886 right 0.23 CTCCAGTTGGGGGTGGGGAGTTGGGAACAGTGTGAATGGG
TABLE 126
Carmustine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.33 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2958 Hcd517 right 0.33 GAGGGATTACAGATTAACTCCCACTTCTCCAGACTCAGAA
2715 Hcd796 left 0.28 GGTGGGATTACCCGGCTGCCGCTGTCGCCTGGATGGTCTC
2290 HUMTRF 0.33 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2414 mir-20bNo1 0.29 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2381 mir-019b-2-prec 0.25 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.27 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir-092-prec-13 = 092-1No2 0.33 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
2407 Hcd148_HPR225left 0.27 AATTAATGACCAAAATGTCAGATGTGTCCACAGCTAATTA
2325 HUMTRAB 0.3 ATGGTAGAGCGCTCGCTTTGCTTGCGAGAGGTAGCGGGAT
2888 Hcd975 left 0.26 GGTTTTGTGTTTTTGTAAACAGCAGAAGGTATTAGTCCAT
2384 mir-135-2-prec 0.28 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2451 mir-128b-precNo1 0.27 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
2966 mir-143-prec 0.32 CTGGTCAGTTGGGAGTCTGAGATGAAGCACTGTAGCTCAG
2386 mir-025-prec 0.33 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2735 mir-216-precNo1 0.34 CTGGGATTATGCTAAACAGAGCAATTTCCTAGCCCTCACG
2390 mir-093-prec-7.1 = 093-1 0.3 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.33 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.61 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.26 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2342 HUMTRV1A 0.26 ACGCGAAAGGTCCCCGGTTCGAAACCGGGCGGAAACACCA
2301 mir-223-prec 0.52 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.46 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2393 mir-018-prec 0.34 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.35 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 127
Lornustine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2413 mir-101-prec-9 0.27 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2715 Hcd796 left 0.26 GGTGGGATTACCCGGCTGCCGCTGTCGCCTGGATGGTCTC
2414 mir-20bNo1 0.28 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2325 HUMTRAB 0.35 ATGGTAGAGCGCTCGCTTTGCTTGCGAGAGGTAGCGGGAT
2384 mir-135-2-prec 0.27 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2472 mir-153-1-prec1 0.32 CAGTTGCATAGTCACAAAAGTGATCATTGGCAGGTGTGGC
2386 mir-025-prec 0.29 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2390 mir-093-prec-7.1 = 093-1 0.26 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.31 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.41 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2342 HUMTRV1A 0.28 ACGCGAAAGGTCCCCGGTTCGAAACCGGGCGGAAACACCA
2302 Hcd754 left 0.35 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2393 mir-018-prec 0.27 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.28 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 128
Mercaptopurine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.39 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2412 mir-096-prec-7No1 0.26 CTCCGCTCTGAGCAATCATGTGCAGTGCCAATATGGGAAA
2430 mir-123-precNo2 0.32 TGTGACACTTCAAACTCGTACCGTGAGTAATAATGCGCCG
2877 MPR249 left 0.26 TCGGTTTGGTTCAGCTGGTATGCTTTCCAGTATCTCATTC
2486 HPR232 right 0.28 TGAATTATTGCACAATAAATTCATGCCCTGTTGTGTCTTA
2413 mir-101-prec-9 0.4 GCTGTATATCTGAAAGGTACAGTACTGTGATAACTGAAGA
2391 mir-106aNo1 0.31 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2414 mir-20bNo1 0.38 AGTACCAAAGTGCTCATAGTGCAGGTAGTTTTGGCATGAC
2882 Hcd861 right 0.25 AAGGTCTGGATTGATCGTACTGCTTTCTGAAAGGTAAAAA
2572 mir-017-precNo2 0.26 GTCAGAATAATGTCAAAGTGCTTACAGTGCAGGTAGTGAT
2381 mir-019b-2-prec 0.33 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2607 mir-033-prec 0.3 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2506 Hcd102 left 0.26 ACTGGAATTATGTTTTATCTTAAGTCCACACTGGATCCTC
2386 MPR216 left 0.32 GATCCTAGTAGTGCCAAAGTGCTCATAGTGCAGGTAGTTT
2888 Hcd975 left 0.25 GGTTTTGTGTTTTTGTAAACAGCAGAAGGTATTAGTCCAT
2383 mir-019b-1-prec 0.3 TTCTGCTGTGCAAATCCATGCAAAACTGACTGTGGTAGTG
2384 mir-135-2-prec 0.38 CACTCTAGTGCTTTATGGCTTTTTATTCCTATGTGATAGT
2524 Hcd581 right 0.26 AGGAGATATGCCAAGATATATTCACAGCTTTATATACACA
2525 Hcd536_HPR104 right 0.25 GCTGCTCTGCTGAGGGGCTGGACTCTGTCCAGAAGCACCA
2893 mir-128b-precNo2 0.25 GGGGGCCGATACACTGTACGAGAGTGAGTAGCAGGTCTCA
2332 HSTRNL 0.37 TCCGGATGGAGCGTGGGTTCGAATCCCACTTCTGACACCA
2386 mir-025-prec 0.47 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2692 mir-18bNo2 0.27 AGCAGCTTAGAATCTACTGCCCTAAATGCCCCTTCTGGCA
2897 HPR262 left 0.26 TCAGTTTGGTTCAGCTGGTATGCTTTCCAGTATCTCATTC
2298 Hcd923 right 0.33 CTGGAGATAATGATTCTGCATTTCTAATTAACTCCCAGGT
2899 Hcd434 right 0.3 CACTTTTTCCTTTGTGGAAATCCTGGGTGACATCACCTCC
2900 Hcd658 right 0.28 GACTGCAGAGCAAAAGACACGATGGGTGTCTATTGTTTTC
2901 HPR129 left 0.29 TTTTCCTGCTTGATTTGCTTAATGGAAGCTGACAGTGAAG
2389 mir-380-5p 0.32 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2390 mir-093-prec-7.1 = 093-1 0.45 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.5 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2544 Hcd627 left 0.31 GCATTAGGGAGAATAGTTGATGGATTACAAATCTCTGCAT
2300 mir-142-prec 0.33 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2393 mir-018-prec 0.46 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.5 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
TABLE 129
Teniposide microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2711 mir-124a-3-prec 0.25 TTAAGGCACGCGGTGAATGCCAAGAGAGGCGCCTCCGCCG
2321 Hcd768 right 0.28 GCCCTGGCGGAACGCTGAGAAGACAGTCGAACTTGACTAT
2290 HUMTRF 0.28 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2306 mir-213-precNo1 0.25 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2295 mir-181b-precNo2 0.28 ACCATCGACCGTTGATTGTACCCTATGGCTAACCATCATC
2447 Hcd783 left 0.28 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2785 mir-212-precNo2 0.32 CGGACAGCGCGCCGGCACCTTGGCTCTAGACTGCTTACTG
2296 mir-124a-1-prec1 0.25 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2299 mir-342No1 0.29 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.49 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2341 HSHELA01 0.3 GGCCGCAGCAACCTCGGTTCGTATCCGAGTCACGGCACCA
2301 mir-223-prec 0.27 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2302 Hcd754 left 0.29 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
TABLE 130
Dactinomycin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2386 mir-025-prec 0.27 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
2283 mir-007-1-prec 0.28 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2390 mir-093-prec-7.1 = 093-1 0.3 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2287 Hcd794 right 0.33 GGCCACCACAGACACCAACAAGTTCAGTCCGTTTCTGCAG
2300 mir-142-prec 0.34 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
TABLE 131
Tretinoin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2771 Hcd257 left 0.42 CTTCTTGTATAAGCACTGTGCTAAAATTGCAGACACTAGG
2772 mir-148-prec 0.45 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2773 Hcd512 left 0.28 CTGCGCTCTCGGAAATGACTCGCTCCAATCCCGCTTCGCG
2774 HPR227 right 0.25 CAGTGCAATGATATTGTCAAAGCATCTGGGACCAGCCTTG
2775 Hcd421 right 0.37 AGTAAACAATGTCGGCTTTCCGCCTCCTCCCCTGCCATCC
2333 MPR203 left 0.39 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2777 mir-017-precNo1 0.26 GCATCTACTGCAGTGAAGGCACTTGTAGCATTATGGTGAC
2778 mir-219-2No1 0.26 CTCAGGGGCTTCGCCACTGATTGTCCAAACGCAATTCTTG
2779 mir-328No1 0.3 GAAAGTGCATACAGCCCCTGGCCCTCTCTGCCCTTCCGTC
2447 Hcd783 left 0.31 CAGGCTCACACCTCCCTCCCCCAACTCTCTGGAATGTATA
2781 Hcd181 left 0.32 TTGGCGTCCTTGTCTCTCTCTCCCCTGCCCAGTGGCCTCC
2765 HPR213 right 0.3 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCAA
2783 mir-191-prec 0.31 CAACGGAATCCCAAAAGCAGCTGTTGTCTCCAGAGCATTC
278 mir-375 0.31 TTTTGTTCGTTCGGCTCGCGTGAGGCAGGGGCGGCCTCTC
2785 mir-212-precNo2 0.26 CGGACAGCGCGCCGGCACCTTGGCTCTAGACTGCTTACTG
2326 Hcd913 right 0.34 CAAACATCATGTGACGTCTGTGGAGCGGCGGCGGCGGCGG
2330 Hcd716 right 0.48 CAATAAATGTGCCTATAAAGGCGCCGGCTCCGGGGCGCGG
2331 MPR207 right 0.3 AACAACTTTGTGCTGGTGCCGGGGAAGTTTGTGTCTCCTA
2333 HPR206 left 0.26 CTATATTGGACCGCAGCGCTGAGAGCTTTTGTGTTTAATG
2588 mir-016b-chr3 0.29 GTTCCACTCTAGCAGCACGTAAATATTGGCGTAGTGAAAT
2285 Hcd654 left 0.34 AACGAGTAAAAGGCGTACATGGGAGCGCGGGGCGGCAGAG
2475 mir-195-prec 0.3 TCTAGCAGCACAGAAATATTGGCACAGGGAAGCGAGTCTG
2793 Hcd425 left 0.25 GGTTCTACTCTCTTACCCCTCCCCCACGTGGTTGTTGCTG
2772 mir-148aNo1 0.35 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2300 mir-142-prec 0.36 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2598 mir-016a-chr13 0.25 CAATGTCAGCAGTGCCTTAGCAGCACGTAAATATTGGCGT
TABLE 132
Ifosfamide microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.28 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
2718 mir-181b-2No1 0.28 CTGATGGCTGCACTCAACATTCATTGCTGTCGGTGGGTTT
3275 Hcd417 right 0.28 GGATTTAATGAGAAATATTGAGCCCTTTGGTTCAGGAACT
3276 Hcd440_HPR257 right 0.28 GCTCTGTTGTGATAAATTGGCTGTGTGCTTCATTTGGACT
2381 mir-019b-2-prec 0.25 GTGGCTGTGCAAATCCATGCAAAACTGATTGTGATAATGT
2306 mir-213-precNo1 0.39 AACATTCATTGCTGTCGGTGGGTTGAACTGTGTGGACAAG
2607 mir-033-prec 0.29 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir-092-prec-13 = 092-1No2 0.3 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
2398 mir-181b-precNo1 0.36 TGAGGTTGCTTCAGTGAACATTCAACGCTGTCGGTGAGTT
2451 mir-128b-precNo1 0.46 TCACAGTGAACCGGTCTCTTTCCCTACTGTGTCACACTCC
3283 mir-526a-2No2 0.29 GAAAAGAACATGCATCCTTTCAGAGGGTTACTCTTTGAGA
2589 MPR95 left 0.25 TTGTTGGACACTCTTTCCCTGTTGCACTACTGTGGGCCTC
3285 HPR220 right 0.27 GAGCATCAGTATGTAGTGCAATCAGTCAGGAGAAAATGAG
3286 mir-133a-1 0.35 CCTCTTCAATGGATTTGGTCCCCTTCAACCAGCTGTAGCT
2772 mir-148aNo1 0.3 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2300 mir-142-prec 0.4 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2427 HPR169 right 0.26 GTTTCTTTCTCACGGTAACTGGCAGCCTCGTTGTGGGCTG
2301 mir-223-prec 0.38 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2393 mir-018-prec 0.27 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
2394 mir-020-prec 0.25 TAAAGTGCTTATAGTGCAGGTAGTGTTTAGTTATCTACTG
2453 mir-484 0.27 GTCAGGCTCAGTCCCCTCCCGATAAACCCCTAAATAGGGA
TABLE 133
Tamoxifen microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2377 mir-092-prec-X = 092-2 0.31 GTTCTATATAAAGTATTGCACTTGTCCCGGCCTGTGGAAG
3295 Hcd547 left 0.27 AAAATCAGCTTTAATTAATTTGAGTGCCAGCTCTGTGTAT
2771 Hcd257 left 0.27 CTTCTTGTATAAGCACTGTGCTAAAATTGCAGACACTAGG
2772 mir-148-prec 0.27 TGAGTATGATAGAAGTCAGTGCACTACAGAACTTTGTCTC
2305 HUMTRS 0.25 TCTAGCGACAGAGTGGTTCAATTCCACCTTTCGGGCGCCA
2607 mir-033-prec 0.27 GTGGTGCATTGTAGTTGCATTGCATGTTCTGGTGGTACCC
2608 mir-092-prec-13 = 092-1No2 0.25 TCTGTATGGTATTGCACTTGTCCCGGCCTGTTGAGTTTGG
278 mir-375 0.46 TTTTGTTCGTTCGGCTCGCGTGAGGCAGGGGCGGCCTCTC
2441 mir-095-prec-4 0.28 CGTTACATTCAACGGGTATTTATTGAGCACCCACTCTGTG
2386 mir-025-prec 0.35 ACGCTGCCCTGGGCATTGCACTTGTCTCGGTCTGACAGTG
3304 mir-202-prec 0.34 GATCTGGCCTAAAGAGGTATAGGGCATGGGAAGATGGAGC
2283 mir-007-1-prec 0.26 TGTTGGCCTAGTTCTGTGTGGAAGACTAGTGATTTTGTTG
2390 mir-093-prec-7.1 = 093-1 0.44 CCAAAGTGCTGTTCGTGCAGGTAGTGTGATTACCCAACCT
2391 mir-106-prec-X 0.31 CCTTGGCCATGTAAAAGTGCTTACAGTGCAGGTAGCTTTT
2300 mir-142-prec 0.25 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2301 mir-223-prec 0.25 GAGTGTCAGTTTGTCAAATACCCCAAGTGCGGCACATGCT
2393 mir-018-prec 0.26 TAAGGTGCATCTAGTGCAGATAGTGAAGTAGATTAGCATC
TABLE 134
Floxuridine microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.27 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2728 HUMTRN 0.27 CAATCGGTTAGCGCGTTCGGCTGTTAACCGAAAGGTTGGT
2296 mir-124a-1-prec1 0.31 ATACAATTAAGGCACGCGGTGAATGCCAAGAATGGGGCTG
2448 mir-150-prec 0.33 CTCCCCATGGCCCTGTCTCCCAACCCTTGTACCAGTGCTG
2703 Hcd923 left 0.26 TGGGAACCTTGTTAAAATGCAGATTCTGATTCTCAGGTCT
3316 HPR181 left 0.28 GAAGAAACATCTCAAATCATGCTGACAGCATTTTCACTAT
3317 Hcd569 right 0.26 TTATTGCTTGAATGAGTTTCAGGGTATTGGCCTTCATAAA
2558 mir-199a-2-prec 0.25 TCGCCCCAGTGTTCAGACTACCTGTTCAGGACAATGCCGT
2308 Hcd754 left 0.28 TCCTCCTCCTCCTTTTCGTTCCGGCTCCCTGGCTGGCTCC
2410 mir-4323p 0.3 CCTTACGTGGGCCACTGGATGGCTCCTCCATGTCTTGGAG
TABLE 135
Irinotecan microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
2290 HUMTRF 0.27 GATCTAAAGGTCCCTGGTTCGATCCCGGGTTTCGGCACCA
2389 mir-380-5p 0.27 AGGTACCTGAAAAGATGGTTGACCATAGAACATGCGCTAT
2299 mir-342No1 0.25 GTCTCACACAGAAATCGCACCCGTCACCTTGGCCTACTTA
2300 mir-142-prec 0.35 CCCATAAAGTAGAAAGCACTACTAACAGCACTGGAGGGTG
2405 Hcd200 right 0.25 CAATTAGCCAATTGTGGGTATAATTAGCTGCATGTAGAAT
TABLE 136
Satraplatin microRNA biomarkers.
SEQ
ID
NO Medianprobe Corr Sequence
3326 Hcd289 left 0.31 TTCCTCTCAGAGCATGTTGTCATAGAAGTAAATGAAAAGG
3327 Hcd939 right 0.25 CTCTCCTGCACATAATGAGGTCTGATTTACTGTGATCATT
3328 Hcd330 right 0.28 ATTAATGGTAATTATGTGCGTAAATCCCCATGCTCTCAAT
3329 HPR76 right 0.25 GAGCCGTTTAAATTTAGCGCTTTGGGCTGCCTGGAGCGAG
3330 Hcd111 left 0.29 GCAGGGGATTTGAGGGGTGGTTGTGTGATTTGTACAGCTG
3331 Hcd976 right 0.36 CTTCTCAGAGTTGGAGATGAAAGAAAGAGAAGGTGGCCAC
3332 mir-15aNo1 0.29 CCTTGGAGTAAAGTAGCAGCACATAATGGTTTGTGGATTT
3333 mir-001b-1-prec1 0.26 AATGCTATGGAATGTAAAGAAGTATGTATTTTTGGTAGGC
2292 mir-450-1 0.36 AACGATACTAAACTGTTTTTGCGATGTGTTCCTAATATGC
3335 mir-200bNo2 0.3 CCAGCTCGGGCAGCCGTGGCCATCTTACTGGGCAGCATTG
3336 Hcd578 right 0.3 AATGATTGTAGAGGGGCGGGGCATGAAGAGTGCCGTTCTG
2578 mir-200a-prec 0.28 GTCTCTAATACTGCCTGGTAATGATGACGGCGGAGCCCTG

Claims (84)

What is claimed is:
1. A method of determining sensitivity of a cancer patient to a treatment for cancer comprising contacting a sample comprising one or more nucleic acid molecules from said patient to a device comprising single-stranded oligonucleotides, wherein at least one of said oligonucleotides comprises a sequence that is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of a first microRNA selected from mir-142-prec or a product of a first gene selected from ZNFN1A1, and measuring hybridization between said nucleic acid molecules from said patient and said single-stranded oligonucleotides of said device to determine a level of expression of at least said first microRNA or said first gene in a cell of said patient, wherein an increase or decrease in the level of expression of said first microRNA or said first gene in said cell of said patient, relative to the level of expression of said first microRNA or said first gene in a control cell sensitive to said treatment, indicates said cell is sensitive to said treatment.
2. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPS4X, S100A4, NDUFS6, C14orf139, SLC25A5, RPL10, RPL12, EIF5A, RPL36A, BLMH, CTBP1, TBCA, MDH2, and DX59879E, and, optionally, a third gene selected from at least one of UBB, B2M, MAN1A1, and SUI1, or
ii) a second additional microRNA selected from at least one of Hcd892, Hcd678, hsa-mir-007-1-prec, MPR243, Hcd654, hsa-mir-487, Hcd794, Hcd739, and Hcd562,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Vincristine.
3. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of C1QR1, SLA, PTPN7, ZNFNIA1, CENTB1, IFI16, ARHGEF6, SEC31L2, CD3Z, GZMB, CD3D, MAP4K1, GPR65, PRF1, ARHGAP15, TM6SF1, and TCF4, and, optionally, a third gene selected from at least one of HCLS1, CD53, PTPRCAP, and PTPRC, or
ii) a second microRNA selected from at least one of HUMTRF, HPR187, hsa-mir-450-1, hsa-mir-155-prec, hsa-mir-515-15p, hsa-mir-181b-prec, hsa-mir-124a-1-prec1, hsa-mir-450-2, Hcd923, hsa-mir-342, hsa-mir-142-prec, hsa-mir-223-prec, Hcd754, and Hcd213_HPR182,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Cisplatin.
4. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of SRM, SCARB1, SIAT1, CUGBP2, ICAM1, WASPIP, ITM2A, PALM2-AKAP2, PTPNS1, MPP1, LNK, FCGR2A, RUNX3, EVI2A, BTN3A3, LCP2, BCHE, LY96, LCP1, IFI16, MCAM, MEF2C, SLC1A4, FYN, C1orf38, CHS1, FCGR2C, TNIK, AMPD2, SEPT6, RAFTLIN, SLC43A3, RAC2, LPXN, CKIP-1, FLJ10539, FLJ35036, DOCK10, TRPV2, IFRG28, LEF1, and ADAMTS1, and, optionally, a third gene selected from at least one of MSN, SPARC, VIM, GAS7, ANPEP, EMP3, BTN3A2, FN1, and CAPN3, or
ii) a second microRNA selected from at least one of MPR121, HUMTRS, hsa-mir-213-prec, hsa-mir-155-prec, hsa-mir-147-prec, hsa-mir-100, hsa-mir-138-1-prec, hsa-mir-140, hsa-mir-146-prec, hsa-mir-509, hsa-mir-146b, Hcd514, Hcd397, Hcd731, hsa-mir-034-prec, and hsa-mir-100-1/2-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Azaguanine.
5. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, INSIG1, PRG1, MUF1, SLA, SSBP2, GNB5, MFNG, PSMB9, EVI2A, PTPN7, PTGER4, CXorf9, ZNFN1A1, CENTB1, NAP1L1, HLA-DRA, IFI16, ARHGEF6, PSCDBP, SELPLG, LAT, SEC31L2, CD3Z, SH2DIA, GZMB, SCN3A, RAFTLIN, DOCK2, CD3D, RAC2, ZAP70, GPR65, PRF1, ARHGAP15, NOTCH1, and UBASH3A, and, optionally, a third gene selected from at least one of LAPTM5, HCLS1, CD53, GMFG, PTPRCAP, PTPRC, CORO1A, and ITK, or
ii) a second microRNA selected from at least one of Hcd415, Hcd768, HUMTRF, Hcd866, Hcd145, HUMTRAB, Hcd913, HPR163, Hcd697, Hcd755, Hcd716, MPR207, HSTRNL, HPR206, MPR243, Hcd654, MPR130, Hcd782, Hcd794, Hcd739, hsa-mir-142-prec, HSHELA01, HUMTRVIA, and Hcd754,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Etoposide.
6. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, ALDOC, SLA, SSBP2, IL2RG, CXorf9, RHOH, ZNFN1A1, CENTB1, CD1C, MAP4K1, CD3G, CCR9, CXCR4, ARHGEF6, SELPLG, LAT, SEC31L2, CD3Z, SH2D1A, CD1A, LAIR1, TRB@, CD3D, WBSCR20C, ZAP70, IFI44, GPR65, A1F1, ARHGAP15, NARF, and PACAP, and, optionally, a third gene selected from at least one the group consisting of LAPTM5, HCLS1, CD53, GMFG, PTPRCAP, TCF7, CD1B, PTPRC, CORO1A, HEM1, and ITK, or
ii) a second microRNA selected from at least one of Hcd768, hsa-mir-483, Hcd145, hsa-mir-197-prec, hsa-mir-212-prec, HPR163, Hcd654, hsa-mir-342, Hcd794, hsa-mir-142-prec, and Hcd754,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Adriamycin.
7. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPL12, RPLP2, MYB, ZNFN1A1, SCAP1, STAT4, SP140, AMPD3, TNFAIP8, DDX18, TAF5, RPS2, DOCK2, GPR65, HOXA9, FLJ12270, and HNRPD, and, optionally, a third gene selected from at least one of RPL32, FBL, and PTPRC, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-096-prec-7, Hcd605, hsa-mir-007-2-prec, hsa-mir-019b-2-prec, MPR216, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, HSTRNL, hsa-mir-025-prec, hsa-mir-007-1-prec, hsa-mir-019a-prec, hsa-mir-380-5p, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Aclarubicin.
8. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PGAM1, DPYSL3, INSIG1, GJA1, BNIP3, PRG1, G6PD, PLOD2, LOXL2, SSBP2, C1orf29, TOX, STC1, TNFRSF1A, NCOR2, NAP1L1, LOC94105, ARHGEF6, GATA3, TFPI, LAT, CD3Z, AF1Q, MAP1B, TRIM22, CD3D, BCAT1, IFI44, CUTC, NAP1L2, NME7, FLJ21159, and COL5A2, and, optionally, a third gene selected from at least one of BASP1, COL6A2, PTPRC, PRKCA, CCL2, and RAB31, or
ii) a second microRNA selected from at least one of Hcd768, HUMTRF, hsa-mir-213-prec, hsa-mir-181b-prec, MPR244, hsa-mir-409-3p, HSTRNL, hsa-mir-382, hsa-mir-342, hsa-mir-142-prec, and Hcd200,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Mitoxantrone.
9. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of STC1, GPR65, DOCK10, COL5A2, FAM46A, and LOC54103, or
ii) a second microRNA selected from at least one of HUMTRF, Hcd148_HPR225 left, Hcd938, MPR174, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Mitomycin.
10. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPL10, RPS4X, NUDC, DKC1, DKFZP564C186, PRP19, RAB9P40, HSA9761, GMDS, CEP1, IL13RA2, MAGEB2, HMGN2, ALMS1, GPR65, FLJ10774, NOL8, DAZAP1, SLC25A15, PAF53, DXS9879E, PITPNC1, SPANXC, and KIAA1393, and, optionally, RALY, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-096-prec-7, hsa-mir-101-prec-9, hsa-mir-20b, hsa-mir-019b-2-prec, hsa-mir-032-prec, MPR156, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, hsa-mir-025-prec, hsa-mir-007-1-prec, hsa-mir-361, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-098-prec-X, hsa-mir-142-prec, HPR169, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Paclitaxel.
11. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PFN1, PGAM1, K-ALPHA-1, CSDA, UCHL1, PWP1, PALM2-AKAP2, TNFRSF1A, ATP5G2, AF1Q, NME4, and FHOD1, or
ii) a second microRNA selected from at least one of hsa-mir-123-prec, Hcd257, hsa-mir-155-prec, ath-MIR180a, Hcd448, HSTRNL, MPR174, Hcd200, hsa-mir-4323p, and HPR244,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Gemcitabine.
12. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ANP32B, GTF3A, RRM2, TRIM14, SKP2, TRIP13, RFC3, CASP7, TXN, MCM5, PTGES2, OBFC1, EPB41L4B, and CALML4, or
ii) a second microRNA selected from at least one of hsa-mir-096-prec-7, hsa-mir-095-prec-4, HSTRNL, and hsa-mir-007-1-prec,
wherein an increase or decrease in said level of expression of said second gene or said second additional microRNA indicates that said cell is sensitive to Taxotere.
13. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of IFITM2, UBE2L6, USP4, ITM2A, IL2RG, GPRASP1, PTPN7, CXorf9, RHOH, GIT2, ZNFN1A1, CEP1, TNFRSF7, MAP4K1, CCR7, CD3G, ATP2A3, UCP2, GATA3, CDKN2A, TARP, LAIR1, SH2D1A, SEPT6, HA-1, ERCC2, CD3D, LST1, AIF1, ADA, DATF1, ARHGAP15, PLACE, CECR1, LOC81558, and EHD2, and, optionally, a third gene selected from at least one of LAPTM5, ITGB2, ANPEP, CD53, CD37, ADORA2A, GNA15, PTPRC, CORO1A, HEM1, FLII, and CREB3L1, or
ii) a second microRNA selected from at least one of MPR141, hsa-mir-424, Hcd690, Hcd783, hsa-mir-150-prec, Hcd266, hsa-mir-503, hsa-mir-128b-prec, Hcd397, and hsa-mir-484,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Dexamethasone.
14. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
I) a second gene selected from at least one of ITM2A, RHOH, PRIM1, CENTB1, NAP1L1, ATP5G2, GATA3, PRKCQ, SH2DIA, SEPT6, NME4, CD3D, CD1E, ADA, and FHOD1, and, optionally, a third gene selected from at least one of GNA15, PTPRC, and RPL13, or
ii) a second microRNA selected from at least one of HUMTRF, hsa-mir-155-prec, hsa-mir-515-15p, Hcd938, Hcd642, Hcd120, hsa-mir-380-5p, hsa-mir-342, hsa-mir-142-prec, hsa-mir-223-prec, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Ara-C.
15. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, ARHGDIB, VWF, ITM2A, LGALS9, INPP5D, SATB1, TFDP2, SLA, IL2RG, MFNG, SELL, CDW52, LRMP, ICAM2, RIMS3, PTPN7, ARHGAP25, LCK, CXorf9, RHOH, GIT2, ZNFN1A1, CENTB1, LCP2, SPI1, GZMA, CEP1, CD8A, SCAP1, CD2, CD1C, TNFRSF7, VAV1, MAP4K1, CCR7, C6orf32, ALOX15B, BRDT, CD3G, LTB, ATP2A3, NVL, RASGRP2, LCP1, CXCR4, PRKD2, GATA3, TRA@, KIAA0922, TARP, SEC31L2, PRKCQ, SH2DIA, CHRNA3, CD1A, LST1, LAIR1, CACNA1G, TRB@, SEPT6, HA-1, DOCK2, CD3D, TRD@, T3JAM, FNBP1, CD6, AIF1, FOLH1, CD1E, LY9, ADA, CDKL5, TRIM, EVL, DATF1, RGC32, PRKCH, ARHGAP15, NOTCH1, BIN2, SEMA4G, DPEP2, CECR1, BCL11B, STAG3, GALNT6, UBASH3A, PHEMX, FLJ13373, LEF1, IL21R, MGC17330, AKAP13, ZNF335, and GIMAP5, and, optionally, a third gene selected from at least one of SRRM1, LAPTM5, ITGB2, CD53, CD37, GMFG, PTPRCAP, GNA15, BLM, PTPRC, CORO1A, PRKCB1, HEM1, and UGT2B17, or
ii) a second microRNA selected from at least one of Hcd544, hsa-mir-181c-prec, Hcd517, MPR151, hsa-mir-213-prec, hsa-mir-181b-prec, hsa-mir-150-prec, hsa-mir-153-1-prec1, hsa-mir-128b-prec, Hcd812, hsa-mir-195-prec, hsa-mir-342, hsa-mir-370, hsa-mir-142-prec, hsa-mir-223-prec, and hsa-mir-484,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Methylprednisolone.
16. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PRPF8, RPL18, GOT2, RPL13A, RPS15, RPLP2, CSDA, KHDRBS1, SNRPA, IMPDH2, RPS19, NUP88, ATP5D, PCBP2, ZNF593, HSU79274, PRIM1, PFDN5, OXA1L, H3F3A, ATIC, CIAPIN1, RPS2, PCCB, SHMT2, RPLP0, HNRPA1, STOML2, SKB1, GLTSCR2, CCNB1IP1, MRPS2, FLJ20859, and FLJ12270, and, optionally, a third gene selected from at least one of RNPS1, RPL32, EEF1G, PTMA, RPL13, FBL, RBMX, and RPS9, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-096-prec-7, hsa-mir-123-prec, Hcd250, hsa-mir-518e, HPR232, Hcd263, hsa-mir-516-33p, Hcd605, Hcd373, MPR254, MPR215, HUMTRF, hsa-mir-106a, hsa-mir-20b, Hcd361, Hcd412, Hcd781, hsa-mir-019b-2-prec, HPR214, Hcd807, Hcd817, Hcd788, Hcd970, Hcd148_HPR225 left, Hcd102, Hcd246, HPR199, HPR233, Hcd383, MPR224, HPR172, MPR216, hsa-mir-321, Hcd586, Hcd587, Hcd249, Hcd279, HPR159, Hcd689, Hcd691, hsa-mir-019b-1-prec, Hcd413, Hcd581, Hcd536_HPR104, Hcd230, HPR154, Hcd270, Hcd649, Hcd889, Hcd938, HPR266, hsa-mir-025-prec, Hcd355_HPR190, MPR162, Hcd923, MPR237, MPR174, hsa-mir-019a-prec, hsa_mir490_Hcd20, hsa-mir-380-5p, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, Hcd627, hsa-mir-142-prec, HPR169, hsa-mir-001b-2-prec, hsa-mir-018-prec, hsa-mir-020-prec, Hcd404, hsa-mir-384, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Methotrexate.
17. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PFN1, HK1, MCL1, ZYX, RAP1B, GNB2, EPAS1, PGAM1, CKAP4, DUSP1, MYL9, K-ALPHA-1, LGALS1, CSDA, IFITM2, ITGA5, DPYSL3, JUNB, NFKBIA, LAMB1, FHL1, INSIG1, TIMP1, GJA1, PSME2, PRG1, EXT1, DKFZP434J154, MVP, VASP, ARL7, NNMT, TAP1, PLOD2, ATF3, PALM2-AKAP2, IL8, LOXL2, IL4R, DGKA, STC2, SEC61G, RGS3, F2R, TPM2, PSMB9, LOX, STC1, PTGER4, IL6, SMAD3, WNT5A, BDNF, TNFRSFIA, FLNC, OKFZP564K0822, FLOT1, PTRF, HLA-B, MGC4083, TNFRSF108, PLAGL1, PNMA2, TFPI, LAT, GZMB, CYR61, PLAUR, FSCN1, ERP70, AF1Q, HIC, COL6A1, IFITM3, MAPIB, FLJ46603, RAFTLIN, RRAS, FTL, KIAA0877, MT1E, CDC10, DOCK2, TRIM22, RIS1, BCAT1, PRF1, DBN1, MT1K, TMSB10, FLJ10350, C1orf24, NME7, TMEM22, TPK1, COL5A2, ELK3, CYLD, ADAMTS1, EHD2, and ACTB, and, optionally, a third gene selected from at least one of MSN, ACTR2, AKR1B1, VIM, ITGA3, OPTN, M6PRBP1, COL1A1, BASP1, ANPEP, TGFB1, NFIL3, NK4, CSPG2, PLAU, COL6A2, UBC, FGFR1, BAX, COL4A2, and RAB31, or
ii) a second microRNA selected from at least one of hsa-mir-376a, hsa-mir-155-prec, hsa-mir-409-3p, hsa-mir-495, Hcd498, hsa-mir-199a-2-prec, hsa-mir-382, HPR271, hsa-mir-145-prec, and hsa-mir-199a-1-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Bleomycin.
18. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of SSRP1, NUDC, CTSC, AP1G2, PSME2, LBR, EFNB2, SERPINA1, SSSCA1, EZH2, MYB, PRIM1, H2AFX, HMGA1, HMMR, TK2, WHSC1, DIAPH1, LAMB3, DPAGT1, UCK2, SERPINB1, MDN1, BRRN1, GOS2, RAC2, MGC21654, GTSE1, TACC3, PLEK2, PLACE, HNRPD, and PNAS-4, and, optionally, PTMA, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-101-prec-9, hsa-mir-144-prec, hsa-mir-519a-1, hsa-mir-519b, hsa-mir-015b-prec, hsa-mir-106a, hsa-mir-16-1, hsa-mir-181d, hsa-mir-017-prec, hsa-mir-019b-2-prec, hsa-mir-192, hsa-mir-213-prec, hsa-mir-215-prec, hsa-mir-107, hsa-mir-200b, hsa-mir-103-prec-5=103-1, hsa-mir-519a-1/526c, MPR216, hsa-mir-019b-1-prec, hsa-mir-107-prec-10, hsa-mir-135-2-prec, hsa-mir-103-2-prec, hsa-mir-519a-2, hsa-mir-025-prec, hsa-mir-16-2, MPR95, hsa-mir-016b-chr3, Hcd948, hsa-mir-195-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, hsa-mir-519c/526c, hsa-mir-200a-prec, hsa-mir-016a-chr13, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Methyl-GAG.
19. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ITGA5, TNFAIP3, WNT5A, FOXF2, LOC94105, IFI16, LRRN3, DOCK10, LEPRE1, COL5A2, and ADAMTS1, and, optionally, a third gene selected from at least one of MSN, VIM, CSPG2, and FGFR1, or
ii) a second microRNA selected from at least one of Hcd829, HUMTRF, HPR187, Hcd210_, HPR205, hsa-mir-379, hsa-mir-213-prec, hsa-mir-4325p, hsa-mir-450-1, hsa-mir-155-prec, Hcd28_HPR39 right, MPR244, hsa-mir-409-3p, hsa-mir-124a-1-prec1, hsa-mir-154-prec1, hsa-mir-495, hsa-mir-515-23p, Hcd438 right, Hcd770, hsa-mir-382, hsa-mir-223-prec, Hcd754, and Hcd213_HPR182,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Carboplatin.
20. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPL18, RPL10A, ANAPC5, EEFIB2, RPL13A, RPS15, AKAP1, NDUFAB1, APRT, ZNF593, MRP63, IL6R, SART3, UCK2, RPL17, RPS2, PCCB, TOMM20, SHMT2, RPLP0, GTF3A, STOML2, DKFZp564J157, MRPS2, ALG5, and CALML4, and, optionally, a third gene selected from at least one of RNPS1, RPL13, RPS6, and RPL3, or
ii) a second microRNA selected from at least one of hsa-mir-096-prec-7, hsa-mir-429, Hcd693, HPR214, Hcd586, Hcd249, Hcd689, hsa-mir-194-2, Hcd581, Hcd270, hsa-mir-025-prec, Hcd340, hsa-mir-007-1-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, Hcd794, hsa-mir-020-prec, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to 5-FU (5-Fluorouracil).
21. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of KIFC1, VLDLR, RUNX1, PAFAH1B3, H1FX, RNF144, TMSNB, CRY1, MAZ, SLA, SRF, UMPS, CD3Z, PRKCQ, HNRPM, ZAP70, ADD1, RFC5, TM4SF2, PFN2, BMI1, TUBGCP3, ATP6VIB2, CD1D, ADA, CD99, CD2, CNP, ERG, CD3E, CD1A, PSMC3, RPS4Y1, AKT1, TAL1, UBE2A, TCF12, UBE2S, CCND3, PAX6, RAG2, GSTM2, SATB1, NASP, IGFBP2, CDH2, CRABP1, DBN1, AKR1C1, CACNB3, CASP2, CASP2, LCP2, CASP6, MYB, SFRS6, GLRB, NDN, GNAQ, TUSC3, GNAQ, JARID2, OCRL, FHL1, EZH2, SMOX, SLC4A2, UFD1L, ZNF32, HTATSF1, SHD1, PTOV1, NXF1, FYB, TRIM28, BC008967, TRB@, H1F0, CD3D, CD3G, CENPB, ALDH2, ANXA1, H2AFX, CD1E, DDX5, CCNA2, ENO2, SNRPB, GATA3, RRM2, GLUL, SOX4, MAL, UNG, ARHGDIB, RUNX1, MPHOSPH6, DCTN1, SH3GL3, PLEKHC1, CD47, POLR2F, RHOH, and ADD1, and, optionally, a third gene selected from at least one of ITK, RALY, PSMC5, MYL6, CD1B, STMN1, GNA15, MDK, CAPG, ACTN1, CTNNA1, FARSLA, E2F4, CPSF1, SEPW1, TFRC, ABL1, TCF7, FGFR1, NUCB2, SMA3, FAT, VIM, and ATP2A3,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene indicates that said cell is sensitive to Rituximab.
22. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of TRA1, ACTN4, CALM1, CD63, FKBP1A, CALU, IQGAP1, MGC8721, STAT1, TACC1, TM4SF8, CD59, CKAP4, DUSP1, RCN1, MGC8902, LGALS1, BHLHB2, RRBP1, PRNP, IER3, MARCKS, LUM, FERIL3, SLC20A1, HEXB, EXT1, TJP1, CTSL, SLC39A6, RIOK3, CRK, NNMT, TRAM2, ADAMS, DNAJC7, PLSCR1, PRSS23, PLOD2, NPC1, TOB1, GFPT1, IL8, PYGL, LOXL2, KIAA0355, UGDH, PURA, ULK2, CENTG2, NID2, CAP350, CXCL1, BTN3A3, IL6, WNT5A, FOXF2, LPHN2, CDH11, P4HA1, GRP58, DSIPI, MAP1LC3B, GALIG, IGSF4, IRS2, ATP2A2, OGT, TNFRSF10B, KIAA1128, TM4SF1, RBPMS, RIPK2, CBLB, NR1D2, SLC7A11, MPZL1, SSA2, NQO1, ASPH, ASAH1, MGLL, SERPINB6, HSPA5, ZFP36L1, COL4A1, CD44, SLC39A14, NIPA2, FKBP9, IL6ST, DKFZP564G2022, PPAP2B, MAP1B, MAPK1, MYO1B, CAST, RRAS2, QKI, LHFPL2, 38970, ARHE, KIAA1078, FTL, KIAA0877, PLCB1, KIAA0802, RAB3GAP, SERPINB1, TIMMI7A, SOD2, HLA-A, NOMO2, L0055831, PHLDAI, TMEM2, MLPH, FAD104, LRRC5, RAB7L1, FLJ35036, DOCK10, LRP12, TXNDC5, CDCl4B, HRMT1L1, CORO1C, DNAJC10, TNP01, LONP, AMIGO2, DNAPTP6, and ADAMTS1, and, optionally, a third gene selected from at least one of WARS, CD81, CTSB, PKM2, PPP2CB, CNN3, ANXA2, JAK1, EIF4G3, COL1A1, DYRK2, NFIL3, ACTN1, CAPN2, BTN3A2, IGFBP3, FN1, COL4A2, and KPNB1, or
ii) a second microRNA selected from at least one of hsa-mir-136-prec, Hcd570, Hcd873, Hcd282PO, Hcd799, Hcd829, Hcd210_HPR205, hsa-mir-219-prec, hsa-mir-202, hsa-mir-429, Hcd693, hsa-mir-022-prec, MPR88, hsa-mir-198-prec, hsa-mir-199b-prec, Hcd145, hsa-mir-124a-2-prec, hsa-mir-138-2-prec, Hcd960, Hcd869, Hcd384, hsa-mir-027b-prec, Hcd444, hsa-mir-194-2, hsa-mir-197-prec, Hcd913, HPR163, hsa-mir-138-1-prec, hsa-mir-010a-prec, hsa-mir-023b-prec, hsa-mir-193b, Hcd654, Hcd542, hsa-mir-199a-2-prec, hsa-mir-214-prec, Hcd608, Hcd684, hsa-mir-145-prec, hsa-mir-023a-prec, hsa-mir-024-2-prec, and hsa-mir-199a-1-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to radiation therapy.
23. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of FAU, NOL5A, ANP32A, ARHGDIB, LBR, FABP5, ITM2A, SFRS5, IQGAP2, SLC7A6, SLA, IL2RG, MFNG, GPSM3, PIM2, EVER1, LRMP, ICAM2, RIMS3, FMNL1, MYB, PTPN7, LCK, CXorf9, RHOH, ZNFN1A1, CENTB1, LCP2, DBT, CEP1, IL6R, VAV1, MAP4K1, CD28, PTP4A3, CD3G, LTB, USP34, NVL, CD8B1, SFRS6, LCP1, CXCR4, PSCDBP, SELPLG, CD3Z, PRKCQ, CDlA, GATA2, P2RX5, LAIR1, C1orf38, SH2DIA, TRB@, SEPT6, HA-1, DOCK2, WBSCR20C, CD3D, RNASE6, SFRS7, WBSCR20A, NUP210, CD6, HNRPA1, A1F1, CYFIP2, GLTSCR2, C11orf2, ARHGAP15, BIN2, SH3TC1, STAG3, TM6SF1, C15orf25, FLJ22457, PACAP, and MGC2744, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-123-prec, hsa-mir-106a, hsa-mir-20b, hsa-mir-017-prec, hsa-mir-019b-2-prec, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, hsa-mir-122a-prec, Hcd783, MPR216, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, hsa-mir-128b-prec, hsa-mir-025-prec, Hcd511, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, HPR169, hsa-mir-223-prec, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to PXD101 (belinostat).
24. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, SNRPA, CUGBP2, STAT5A, SLA, IL2RG, GTSE1, MYB, PTPN7, CXorf9, RHOH, ZNFNIA1, CENTB1, LCP2, HIST1H4C, CCR7, APOBEC3B, MCM7, LCP1, SELPLG, CD3Z, PRKCQ, GZMB, SCN3A, LAIR1, SH2D1A, SEPT6, CG018, CD3D, C18orf10, PRF1, AIF1, MCM5, LPXN, C22orf18, ARHGAP15, and LEF1, or
ii) a second microRNA selected from at least one of hsa-mir-096-prec-7, Hcd605, hsa-mir-20b, hsa-miR-373*, HUMTRAB, hsa-mir-019b-1-prec, HPR163, hsa-mir-371, hsa-mir-025-prec, hsa-mir-18b, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to 5-Aza-2′-deoxycytidine (Decitabine).
25. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of SLC9A3R1, RPS19, ITM2A, SSBP2, CXorf9, RHOH, ZNFN1A1, FXYD2, CCR9, NAP1L1, CXCR4, SH2D1A, CD1A, TRB@, SEPT6, RPS2, DOCK2, CD3D, CD6, ZAP70, A1F1, CD1E, CYFIP2, ADA, TRIM, GLTSCR2, FLJ10858, BCL11B, GIMAP6, STAG3, UBASH3A, and, optionally, a third gene selected from at least one of MRPS24, TRIM22, TRIM41, LAT, CD1C, MRPS22, ADAM11, RPL13, RPS27, RPL13, RPS25, RPL18A, CORO1A, PTPRCAP, GMFG, ITK, CD1B, GMFG, PTPRCAP, CORO1A, ITGB2, HCLS1, and ATP2A3, or
ii) a second microRNA selected from at least one of HUMTRF, hsa-mir-483, MPR74, hsa-mir-122a-prec, ath-MIR180a, hsa-mir-128b-prec, Hcd923, hsa-mir-106-prec-X, hsa-mir-342, hsa-mir-142-prec, HPR169, hsa-mir-223-prec, Hcd754, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Idarubicin.
26. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, HLA-DPB1, ARHGDIB, IFITM1, UBE2L6, ITM2A, SERPINA1, STAT5A, INPP5D, DGKA, SATB1, SEMA4D, TFDP2, SLA, IL2RG, CD48, MFNG, ALOX5AP, GPSM3, PSMB9, KIAA0711, SELL, ADA, EDG1, RIMS3, FMNL1, MYB, PTPN7, LCK, CXorf9, RHOH, ZNFN1A1, CENTB1, LCP2, FXYD2, CD1D, BATF, STAT4, VAV1, MAP4K1, CCR7, PDE4C, CD3G, CCR9, SP110, LCP1, IFI16, CXCR4, ARHGEF6, GATA3, SELPLG, SEC31L2, CD3Z, PRKCQ, SH2D1A, GZMB, CD1A, SCN3A, LAIR1, FYB, TRB@, SEPT6, HA-1, DOCK2, CG018, CD3D, T3JAM, FNBP1, CD6, ZAP70, LST1, GPR65, PRF1, A1F1, FLJ20331, RAG2, WDR45, CD1E, CYFIP2, TARP, TRIM, RPL10L, GLTSCR2, GIMAP5, ARHGAP15, NOTCH1, BIN2, C13 orf18, CECR1, BCL11B, GIMAP6, STAG3, TM6SF1, HSD17B7, UBASH3A, MGC5566, FLJ22457, TPK1, PHF11, and DKFZP434B0335, and, optionally, a third gene selected from at least one of FLJ10534, PTPRC, TRIM22, C18orf1, EVL, TRIM41, PSME2, LAT, CD1C, MYBBP1A, ICAM3, ADAM11, CD53, FARSLA, RPL13, RAC2, RPL13, GNA15, PGF, LAPTM5, RPL18A, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GNA15, ITK, CD1B, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, GNA15, TCF7, ITGB2, PTPRC, HCLS1, ATP2A3, MYBL1, and FARSLA, or
ii) a second microRNA selected from at least one of hsa-mir-124a-3-prec, hsa-mir-181a-prec, Hcd773, Hcd683, Hcd796, HUMTRF, HUMTRS, hsa-mir-181b-2, Hcd294, hsa-mir-20b, hsa-mir-181d, hsa-mir-213-prec, Hcd148_HPR225 left, hsa-mir-515-15p, hsa-mir-181b-prec, Hcd783, HUMTRAB, HUMTRN, hsa-mir-181b-1, hsa-mir-124a-1-prec1, hsa-mir-367, hsa-mir-128b-prec, Hcd438 right, hsa-mir-025-prec, hsa-mir-216-prec, Hcd731, hsa-mir-093-prec-7A=093-1, hsa-mir-106-prec-X, hsa-mir-342, hsa-mir-142-prec, HSHELA01, HUMTRV1A, hsa-mir-223-prec, Hcd754, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second cone and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Melphalan.
27. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of MCL1, DDX23, JUNB, ZFP36, IFITM1, CKSIB, SERPINA1, IL4R, CLDN3, ARL4A, HMMR, FLJ12671, ANKHDI, KIF2C, RPA3, MCCC2, CDH17, LSM5, PRF1, ROD1, FLJ12666, SUV420H1, MUC13, C13orf18, and CDCA8, and, optionally, a third gene selected from at least one of ETS2, ARID1A, ID1, DDC, NID2, CCT3, ID2, NFIL3, and AREG, or
ii) a second microRNA selected from at least one of Hcd829, hsa-mir-197-prec, HPR163, and hsa-mir-150-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to IL4-PE38 fusion protein.
28. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of MCL1, DDX23, JUNB, ZFP36, IFITM1, CKS1B, SERPINA1, IL13R, CLDN3, ARL4A, HMMR, FLJ12671, ANKHD1, KIF2C, RPA3, MCCC2, CDH17, LSM5, PRF1, ROD1, FLJ12666, SUV420H1, MUC13, C13orf18, and CDCA8, and, optionally, a third gene selected from at least one of ETS2, ARID1A, 1D1, DDC, NID2, CCT3, ID2, NFIL3, and AREG, or
ii) a second microRNA selected from at least one of Hcd829, hsa-mir-197-prec, HPR163, and hsa-mir-150-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to IL13-PE38QQR fusion protein (cintredekin besudotox).
29. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of STOM, TNFAIP3, ASNS, GARS, CXCR4, EGLN3, LBH, and GDF15, and, optionally, at least one a third gene selected from at least one of STOML1 and KIAA0746, or
ii) a second microRNA selected from at least one of hsa-mir-034prec, Hcd255, Hcd712, Hcd965, Hcd891, Hcd210_HPR205, hsa-mir-429, Hcd753, Hcd693, MPR203, Hcd704, Hcd863PO, hsa-mir-122a-prec, Hcd760, Hcd338, HPR213, Hcd852, Hcd366, MPR103, Hcd669, and hsa-mir-188-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Valproic acid (VPA).
30. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PPIB, ZFP36L2, 1F130, USP7, SRM, SH3BP5, ALDOC, FADS2, GUSB, PSCD1, IQGAP2, STS, MFNG, FLI1, PIM2, INPP4A, LRMP, ICAM2, EVI2A, MAL, BTN3A3, PTPN7, IL10RA, SPI1, TRAF1, ITGB7, ARHGAP6, MAP4K1, CD28, PTP4A3, LTB, C1orf38, WBSCR22, CD8B1, LCP1, FLJ13052, MEF2C, PSCDBP, IL16, SELPLG, MAGEA9, LAIR1, TNFRSF25, EVI2B, IGJ, PDCD4, RASA4, HA-1, PLCL2, RNASE6, WBSCR20C, NUP210, RPL10L, C11orf2, CABC1, ARHGEF3, TAPBPL, CHST12, FKBP11, FLJ35036, MYLIP, TXNDC5, PACAP, TOSO, PNAS-4, IL21R, and TCF4, and, optionally, a third gene selected from at least one of CLTB, BTN3A2, BCL2, SETBP1, ICAM3, BCL2, BCL2, BCL2, CD53, CCND2, CLTB, CLTB, BCL2L11, BTN3A2, CD37, MYCL2, CTSS, LAPTM5, CD53, CORO1A, HEM1, CD53, CORO1A, HEM1, HCLS1, BCL2L11, MYCL1, MYC, and MAN1A1, or
ii) a second microRNA selected from at least one of Hcd257, hsa-mir-148-prec, Hcd512, HPR227, Hcd421, MPR203, hsa-mir-017-prec, hsa-mir-219-2, hsa-mir-328, Hcd783, Hcd181, HPR213, hsa-mir-191-prec, hsa-mir-375, hsa-mir-212-prec, Hcd913, Hcd716, MPR207, HPR206, hsa-mir-016b-chr3, Hcd654, hsa-mir-195-prec, Hcd425, hsa-mir-148a, hsa-mir-142-prec, and hsa-mir-016a-chr13,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to All-trans retinoic acid (ATRA).
31. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of C6orf29, TRIM31, CD69, LRRN3, GPR35, and CDW52, or
ii) a second microRNA selected from at least one of Hcd99, hsa-mir-520c/526a, hsa-mir-191-prec, hsa-mir-205-prec, hsa-mir-375, hsa-mir-423, hsa-mir-449, and hsa-mir-196-2-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Cytoxan.
32. The method of claim 1, wherein said measuring further comprises comprising determining a level of expression of:
i) at least one a second gene selected from at least one the group consisting of K-ALPHA-1, CSDA, UCHL1, NAP1L1, ATP5G2, HDGFRP3, and IFI44, or
ii) a second microRNA selected from at least one of HUMTRF, MPR74, hsa-mir-213-prec, hsa-mir-155-prec, hsa-mir-181b-prec, hsa-mir-342, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene or said second additional microRNA indicates that said cell is sensitive to Topotecan (Hycamtin).
33. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of NOL5A, STOM, SIAT1, CUGBP2, GUSB, ITM2A, JARID2, RUNX3, ICAM2, PTPN7, VAV1, PTP4A3, MCAM, MEF2C, IDH3B, RFP, SEPT6, SLC43A3, WBSCR20C, SHMT2, GLTSCR2, CABC1, FLJ20859, FLJ20010, MGC10993, and FKBP11, and, optionally, a third gene selected from at least one of STOML1, E1F4A1, PDE3B, BCL11A, INPP4B, HLA-DMA, TRFP, EIF4A1, GAS7, MYCL2, HCLS1, MYCL1, and MYC, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-123-prec, hsa-mir-514-1, hsa-mir-101-prec-9, hsa-mir-148-prec, hsa-mir-106a, hsa-mir-20b, Hcd781, hsa-mir-017-prec, hsa-mir-019b-2-prec, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, hsa-mir-107, hsa-mir-103-prec-5=103-1, MPR216, hsa-mir-29b-2=102prec7.1=7.2, hsa-mir-019b-1-prec, hsa-mir-107-prec-10, hsa-mir-135-2-prec, Hcd581, hsa-mir-103-2-prec, Hcd230, hsa-mir-025-prec, hsa-mir-208-prec, hsa-mir-18b, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, HPR169, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Suberoylanilide hydroxamic acid (SAHA, vorinostat, Zolinza).
34. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ZFP36L2, TRIB2, LCP2, C6orf32, IL16, CACNA1G, SPDEF, HAB1, TOSO, and ARHGAP25, and, optionally, a third gene selected from at least one of SGCD and CAPN3, or
ii) a second microRNA selected from at least one of Hcd415, hsa-mir-147-prec, hsa-mir-033b-prec, Hcd778, hsa-mir-127-prec, hsa-mir-324, Hcd794, and Hcd634,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Depsipeptide (FR901228).
35. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PLEKHB2, ARPC1B, MX1, CUGBP2, IFI16, TNFRSF14, SP110, ELF1, LPXN, IFRG28, LEF1, and PYCARD, and, optionally, HMX1, or
ii) a second microRNA selected from at least one of MPR121, Hcd115, Hcd693, Hcd704, HPR100, Hcd760, hsa-mir-147-prec, hsa-mir-033b-prec, hsa-mir-146-prec, Hcd142, hsa-mir-501, Hcd716, MPR207, Hcd777, hsa-mir-204-prec, hsa-mir-146b, Hcd511, Hcd397, MPR130, Hcd782, hsa-mir-324, Hcd794, and Hcd739,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Bortezomib.
36. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of SSRP1, ALDOC, C1QR1, TTF1, PRIM1, USP34, TK2, GOLGIN-67, NPD014, KIAA0220, SLC43A3, WBSCR20C, ICAM2, TEX10, CHD7, SAMSN1, and TPRT, and, optionally, a third gene selected from at least one of PTPRC, CD53, RNPS1, H3F3A, NUDC, SMARCA4, RPL32, PTMA, CD53, PTPRCAP, PTPRC, RPL32, PTPRCAP, PTPRC, CD53, PTPRC, HCLS1, and SLC19A1, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-096-prec-7, hsa-mir-123-prec, MPR249, HPR232, hsa-mir-101-prec-9, hsa-mir-106a, hsa-mir-20b, Hcd861, hsa-mir-017-prec, hsa-mir-019b-2-prec, hsa-mir-033-prec, Hcd102, MPR216, Hcd975, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, Hcd581, Hcd536_HPR104, hsa-mir-128b-prec, HSTRNL, hsa-mir-025-prec, hsa-mir-18b, HPR262, Hcd923, Hcd434, Hcd658, HPR129, hsa-mir-380-5p, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, Hcd627, hsa-mir-142-prec, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Leukeran.
37. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of HLA-E, BAT3, ENO2, UBE2L6, CUGBP2, ITM2A, PALM2-AKAP2, JARID2, DGKA, SLC7A6, TFDP2, ADA, EDG1, ICAM2, PTPN7, CXorf9, RHOH, MX2, ZNFN1A1, COCH, LCP2, CLGN, BNC1, FLNC, HLA-DRB3, UCP2, HLA-DRB1, GATA3, PRKCQ, SH2DIA, NFATC3, TRB@, FNBP1, SEPT6, NME4, DKFZP434C171, ZC3HAV1, SLC43A3, CD3D, AIF1, SPTAN1, CD1E, TRIM, DATF1, FHOD1, ARHGAP15, STAG3, SAP130, and CYLD, and, optionally, a third gene selected from at least one of PTPRC, MX2004PA11424, TRIM22, TRIM41, CD1C, CHD8, ADAM11, ANPEP, RBMX2, RAC2, GNA15, LAPTM5, PTPRCAP, PTPRC, GNA15, CD1B, PTPRCAP, PTPRC, GNA15, PTPRC, and ATP2A3, or
ii) a second microRNA selected from at least one of Hcd773, Hcd248, hsa-mir-181d, MPR74, hsa-mir-213-prec, hsa-mir-155-prec, MPR197, hsa-mir-181b-prec, hsa-mir-29b-2=102prec7.1=7.2, hsa-mir-029c-prec, Hcd318, hsa-mir-128b-prec, hsa-mir-130a-prec, hsa-mir-140, hsa-mir-16-2, hsa-mir-526a-2, hsa-mir-016b-chr3, hsa-mir-195-prec, hsa-mir-216-prec, hsa-mir-342, hsa-mir-29b-1, Hcd627, hsa-mir-102-prec-1, hsa-mir-142-prec, hsa-mir-223-prec, hsa-let-7f-2-prec2, and hsa-mir-016a-chr13,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Fludarabine.
38. The method of claim 1, wherein said measuring further comprises determining a level of expression of CD99 or at least a second microRNA selected from at least one of Hcd794 and Hcd754,
wherein an increase or decrease in said level of expression of said CD99 or said second microRNA indicates that said cell is sensitive to Vinblastine.
39. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPLP2, BTG1, CSDA, ARHGDIB, INSIG1, ALDOC, WASPIP, C1QR1, EDEM1, SLA, MFNG, GPSM3, ADA, LRMP, EVI2A, FMNL1, PTPN7, RHOH, ZNFN1A1, CENTB1, MAP4K1, CD28, SP110, NAP1L1, IFI16, ARHGEF6, SELPLG, CD3Z, SH2DIA, LAIR1, RAFTLIN, HA-1, DOCK2, CD3D, T3JAM, ZAP70, GPR65, CYFIP2, LPXN, RPL10L, GLTSCR2, ARHGAP15, BCL11B, TM6SF1, PACAP, and TCF4, and, optionally, a third gene selected from at least one of PTPRC, BCL2, LAT, ICAM3, BCL2, BCL2, BCL2, ADAM11, CD53, FARSLA, BCL2L11, RPL13, RAC2, RPL13, MYCL2, LAPTM5, RPL18A, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, PTPRC, HCLS1, BCL2L11, MYCL1, FARSLA, and MYC, or
ii) a second microRNA selected from at least one of hsa-mir-096-prec-7, hsa-mir-124a-3-prec, hsa-mir-101-prec-9, Hcd712, Hcd693, hsa-mir-219-2, Hcd145, hsa-mir-155-prec, HPR213, hsa-mir-212-prec, Hcd913, Hcd716, MPR207, Hcd559, Hcd654, Hcd739, and hsa-mir-142-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Busulfan.
40. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one ARHGDIB, ITM2A, SSBP2, PIM2, SELL, ICAM2, EVI2A, MAL, PTPN7, ZNFN1A1, LCP2, ARHGAP6, CD28, CD8B1, LCP1, NPD014, CD69, NFATC3, TRB@, IGJ, SLC43A3, DOCK2, FHOD1, and PACAP, and, optionally, a third gene selected from at least one of ICAM3, CD53, SMARCA4, CD37, LAPTM5, CD53, CORO1A, HEM1, GMFG, GMFG, CD53, CORO1A, HEM1, and HCLS1, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-123-prec, hsa-mir-101-prec-9, Hcd517, Hcd796, Hcd749, Hcd674, hsa-mir-019b-2-prec, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, hsa-mir-124a-2-prec, hsa-mir-143-prec, hsa-mir-516-43p, hsa-mir-216-prec, Hcd731, hsa-mir-106-prec-X, hsa-mir-142-prec, hsa-mir-223-prec, Hcd754, and hsa-mir-018-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Dacarbazine.
41. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPL18, RPL10A, RPS3A, EEF1B2, GOT2, RPL13A, RPS15, NOL5A, RPLP2, SLC9A3R1, EIF3S3, MTHFD2, IMPDH2, ALDOC, FABP5, ITM2A, PCK2, MFNG, GCH1, PIM2, ADA, ICAM2, TTF1, MYB, PTPN7, RHOH, ZNFN1A1, PRIM1, FH1T, ASS, SYK, OXA1L, LCP1, DDX18, NOLA2, KIAA0922, PRKCQ, NFATC3, ANAPC5, TRB@, CXCR4, FNBP4, SEPT6, RPS2, MDN1, PCCB, RASA4, WBSCR20C, SFRS7, WBSCR20A, NUP210, SHMT2, RPLP0, MAP4K1, HNRPA1, CYFIP2, RPL10L, GLTSCR2, MRPL16, MRPS2, FLJ12270, CDK5RAP3, ARHGAP15, CUTC, FKBP11, ADPGK, FLJ22457, PUS3, PACAP, and CALML4, and, optionally, a third gene selected from at least one of MRPS24, DUSP2, EIF4A1, BRD2, BCL11A, RASSF2, MRPL37, MRPL30, RASSF1, MYBBPIA, LASS2, MRPS22, ADAM11, CD53, RPS6 KB1, RNPS1, BRD2, EIF4A1, FBL, BRD2, RPL36A, RPL13, RPL38, H3F3A, KIAA0182, RPS27, RPS6, EEF1G, RPL13, MYCL2, FBLN1, RPS25, RPL32, PTMA, RPL18A, RPL3, CD53, CORO1A, HEM1, GMFG, RPL32, GMFG, CD53, CORO1A, HEM1, HCLS1, ATP2A3, RASSF7, MYCL1, MYBL1, MYC, RPS15A, RASSF2, and LASS6, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-148-prec, hsa-mir-20b, hsa-mir-007-2-prec, hsa-mir-017-prec, hsa-mir-019b-2-prec, Hcd760, Hcd783, MPR216, hsa-mir-375, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, hsa-mir-150-prec, hsa-mir-128b-prec, hsa-mir-499, hsa-mir-025-prec, hsa-mir-007-1-prec, hsa-mir-019a-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, HPR169, hsa-mir-018-prec, hsa-mir-020-prec, and hsa-mir-484,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Oxaliplatin.
42. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CSDA, INSIG1, UBE2L6, PRG1, ITM2A, DGKA, SLA, PCBP2, IL2RG, ALOX5AP, PSMB9, LRMP, ICAM2, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTBI, LCP2, STAT4, CCR7, CD3G, SP110, TNFAIP8, IFI16, CXCR4, ARHGEF6, SELPLG, CD3Z, PRKCQ, SH2DIA, CDIA, NFATC3, LAIR1, TRB@, SEPT6, RAFTLIN, DOCK2, CD3D, CD6, AIF1, CD1E, CYFIP2, TARP, ADA, ARHGAP15, GIMAP6, STAG3, FLJ22457, PACAP, and TCF4, and, optionally, a third gene selected from at least one of PTPRC, TRIM22, PSME2, LAT, CD1C, ICAM3, ADAM11, CD53, FARSLA, RPL13, RAC2, RPL13, NK4, LAPTM5, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, ITGB2, PTPRC, HCLS1, ATP2A3, and FARSLA, or
ii) a second microRNA selected from at least one of Hcd257, Hcd768, Hcd796, HUMTRF, HUMTRS, MPR74, hsa-mir-213-prec, hsa-mir-155-prec, Hcd763, hsa-mir-181b-prec, ath-MIR180a, hsa-mir-216-prec, hsa-mir-342, hsa-mir-142-prec, HSHELA01, HUMTRV1A, hsa-mir-223-prec, Hcd7.54, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Hydroxyurea.
43. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPL11, RPL17, ANAPC5, RPL13A, STOM, TUFM, SCARB1, FABP5, KIAA0711, IL6R, WBSCR22, UCK2, GZMB, C1 orf38, PCBP2, GPR65, GLTSCR2, and FKBP11, and, optionally, a third gene selected from at least one of STOML1, MRPL37, MRPL30, RPL36A, RPL38, HSPD1, MIF, RPL32, RPL3, and RPL32, or
ii) a second microRNA selected from at least one of Hcd257, Hcd946, Hcd503, hsa-mir-429, Hcd693, hsa-miR-373*, Hcd738, hsa-mir-328, Hcd783, Hcd181, Hcd631, Hcd279, hsa-mir-194-2, hsa-mir-197-prec, HPR163, hsa-mir-150-prec, Hcd323, hsa-mir-103-2-prec, Hcd243, Hcd938, hsa-mir-025-prec, hsa-mir-007-1-prec, MPR243, Hcd511, Hcd654, hsa-mir-199a-2-prec, hsa-mir-214-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, Hcd794, Hcd530, HSHELA01, Hcd754, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Tegafur.
44. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ALDOC, ITM2A, SLA, SSBP2, IL2RG, MFNG, SELL, STC1, LRMP, MYB, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTB1, MAP4K1, CCR7, CD3G, CCR9, CBFA2T3, CXCR4, ARHGEF6, SELPLG, SEC31L2, CD3Z, SH2D1A, CDIA, SCN3A, LAIR1, TRB@, DOCK2, WBSCR20C, CD3D, T3JAM, CD6, ZAP70, GPR65, A1F1, WDR45, CD1E, CYFIP2, TARP, TRIM, ARHGAP15, NOTCH1, STAG3, UBASH3A, MGC5566, and PACAP, and, optionally, a third gene selected from at least one of PTPRC, TRIM22, TRIM41, LAT, CD1C, MYBBP1A, CD53, FARSLA, PPP2CA, LAPTM5, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, ITK, CDIB, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, TCF7, PTPRC, HCLS1, ATP2A3, MYBL1, and FARSLA, or
ii) a second microRNA selected from at least one of Hcd768, HUMTRF, Hcd145, Hcd923, hsa-mir-216-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-342, Hcd794, hsa-mir-142-prec, HSHELA01, hsa-mir-223-prec, and Hcd754,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Daunorubicin.
45. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PFN1, CALU, ZYX, PSMD2, RAPIB, EPAS1, PGAM1, STAT1, CKAP4, DUSP1, RCN1, UCHL1, ITGA5, NFKBIA, LAMB1, TGFBI, FHL1, GJA1, PRG1, EXT1, MVP, NNMT, TAP1, CRIM1, PLOD2, RPS19, AXL, PALM2-AKAP2, IL8, LOXL2, PAPSS2, CAV1, F2R, PSMB9, LOX, C1orf29, STC1, LIF, KCNJ8, SMAD3, HPCAL1, WNT5A, BDNF, TNFRSF1A, NCOR2, FLNC, HMGA2, HLA-B, FLOT1, PTRF, IFI16, MGC4083, TNFRSF10B, PNMA2, TFPI, CLECSF2, SP110, PLAUR, ASPH, FSCN1, HIC, HLA-C, COL6A1, IL6ST, IFITM3, MAP1B, FLJ46603, RAFTLIN, FTL, KIAA0877, MT1E, CDC10, ZNF258, BCAT1, IFI44, SOD2, TMSB10, FLJ10350, C1orf24, EFHD2, RPS27L, TNFRSF12A, FAD104, RAB7L1, NME7, TMEM22, TPK1, ELKS, CYLD, AMIGO2, ADAMTS1, and ACTB, and, optionally, a third gene selected from at least one of ACLY, MPZL1, STC2, BAX, RAB31, RAB31, (UBC12, LOXL1, EMP3, FGFR1OP, IL6, TRIM22, OPTN, CYR61, METAP1, SHC1, FN1, EMP3, RAB31, LOXL1, BAX, BAX, RAB31, FN1, CD44, ANXA1, COL5A2, LGALS1, FGFR1, PLAU, TFPI2, TFPI2, VCAM1, SHC1, CSF2RA, EMP3, COL1A1, TGFB1, COL6A2, FGFR1, ITGA3, AKR1B1, MSN, EMP3, VIM, EMP3, COL6A2, MSN, PSMC5, UBC, FGFR1, BASP1, ANXA11, CSPG2, M6PRBP1, PRKCA, OPTN, OPTN, SPARC, CCL2, and ITGA3, or
ii) a second microRNA selected from at least one of hsa-mir-125b-2-prec, hsa-mir-022-prec, hsa-mir-125b-1, hsa-mir-155-prec, hsa-mir-100, hsa-mir-409-3p, hsa-mir-495, hsa-mir-199a-2-prec, hsa-mir-382, and hsa-mir-100-1/2-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Bleomycin.
46. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of HSPCB, LDHA, and TM4SF7, and, optionally, LY6E, or
ii) a second microRNA selected from at least one of Hcd338, hsa-mir-099b-prec-19, and hsa-mir-149-prec,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates that said cell is sensitive to Estramustine.
47. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CSDA, INSIG1, UBE2L6, PRG1, ITM2A, DGKA, TFDP2, SLA, IL2RG, ALOX5AP, GPSM3, PSMB9, SELL, ADA, EDG1, FMNL1, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTB1, LCP2, CD1D, STAT4, VAV1, MAP4K1, CCR7, PDE4C, CD3G, CCR9, SP110, TNFAIP8, LCP1, IFI16, CXCR4, ARHGEF6, SELPLG, SEC31L2, CD3Z, PRKCQ, SH2D1A, GZMB, CD1A, LAIR1, AFIQ, TRB@, SEPT6, DOCK2, RPS19, CD3D, T3JAM, FNBP1, CD6, ZAP70, LST1, BCAT1, PRF1, A1F1, RAG2, CDIE, CYFIP2, TARP, TRIM, GLTSCR2, GIMAP5, ARHGAP15, NOTCH1, BCL11B, GIMAP6, STAG3, TM6SF1, UBASH3A, MGC5566, FLJ22457, and TPK1, and, optionally, a third gene selected from at least one of PTPRC, TRIM22, EVL, TRIM41, PSME2, LAT, CD1C, ADAM11, CD53, FARSLA, RPL13, RAC2, RPL13, GNA15, LAPTM5, RPL18A, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GNA15, ITK, CD1B, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, GNA15, ITGB2, PTPRC, HCLS1, ATP2A3, and FARSLA, or
ii) a second microRNA selected from at least one of hsa-mir-181a-prec, hsa-mir-181c-prec, HUMTRF, hsa-mir-181d, MPR74, Hcd817, hsa-mir-213-prec, hsa-mir-155-prec, Hcd148_HPR225 left, hsa-mir-515-15p, hsa-mir-181b-prec, HUMTRN, hsa-mir-128b-prec, hsa-mir-450-2, hsa-mir-216-prec, hsa-mir-342, hsa-mir-142-prec, hsa-mir-223-prec, Hcd754, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Chlorambucil.
48. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PRG1, SLC2A3, RPS19, PSMB10, ITM2A, DGKA, SEMA4D, SLA, IL2RG, MFNG, ALOX5AP, GPSM3, PSMB9, SELL, ADA, FMNL1, MYB, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTB1, FXYD2, CD1D, STAT4, MAP4K1, CCR7, PDE4C, CD3G, CCR9, SP110, TK2, TNFAIP8, NAP1L1, SELPLG, SEC31L2, CD3Z, PRKCQ, SH2DIA, GZMB, CD1A, LAIR1, TRB@, SEPT6, DOCK2, CG018, WBSCR20C, CD3D, CD6, LST1, GPR65, PRF1, ALMS1, A1F1, CDIE, CYFIP2, TARP, GLTSCR2, FLJ12270, ARHGAP15, NAP1L2, CECR1, GIMAP6, STAG3, TM6SF1, C15orf25, MGC5566, FLJ22457, ET, TPK1, and PHF11, and, optionally, a third gene selected from at least one of ETS2, PTPRC, PETER, SETBP1, LAT, MYBBP1A, ETV5, METAP1, ETS1, ADAM11, CD53, FARSLA, RPL13, ARMET, TETRAN, BET1, RPL13, MET, LAPTM5, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, CD1B, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, ETV4, ITGB2, PTPRC, HCLS1, MYBL1, FARSLA, and METAP2, or
ii) a second microRNA selected from at least one of hsa-mir-124a-3-prec, Hcd946, Hcd683, HPR264, MPR185, HUMTRF, Hcd294, Hcd503, hsa-mir-20b, MPR74, MPR234, Hcd447, Hcd817, Hcd148_HPR225 left, hsa-mir-515-15p, Hcd383, hsa-mir-181b-prec, Hcd783, MPR224, HPR172, MPR216, HUMTRN, hsa-mir-321, HPR159, MPR228, ath-MIR180a, hsa-mir-197-prec, hsa-mir-124a-1-prec1, hsa-mir-128b-prec, Hcd28_HPR39 left, Hcd889, Hcd350, hsa-mir-025-prec, hsa-mir-208-prec, hsa-mir-450-2, Hcd923, Hcd434, HPR129, HPR220, hsa-mir-380-5p, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-342, hsa-mir-142-prec, HSHELA01, hsa-mir-223-prec, Hcd754, hsa-mir-020-prec, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Mechlorethamine.
49. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PGK1, SCD, INSIG1, IGBP1, TNFAIP3, TNFSF10, ABCA1, AGA, ABCA8, DBC1, PTGER2, UGTIA3, C10 orf10, TM4SF13, CGI-90, LXN, DNAJC12, HIPK2, and C9orf95, and, optionally, a third gene selected from at least one of FGFR10P, PLXNA1, PSCD2L, TUBB, FGFR1, TUBB2, PAGA, TUBB2, UBB, TUBB2, FGFR1, FGFR1, and TUBB-PARALOG, or
ii) a second microRNA selected from at least one of hsa-mir-483, Hcd631, hsa-mir-212-prec, Hcd938, MPR133, Hcd794, Hcd438, and Hcd886,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Streptozocin.
50. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPLP2, CD99, IFITM1, INSIG1, ALDOC, ITM2A, SERPINA1, C1QR1, STAT5A, INPP5D, SATB1, VPS16, SLA, IL2RG, MFNG, SELL, LRMP, ICAM2, MYB, PTPN7, ARHGAP25, LCK, CXorf9, RHOH, ZNFN1A1, CENTB1, ADD2, LCP2, SPI1, DBT, GZMA, CD2, BATF, HIST1H4C, ARHGAP6, VAV1, MAP4K1, CCR7, PDE4C, CD3G, CCR9, SP140, TK2, LCP1, IFI16, CXCR4, ARHGEF6, PSCDBP, SELPLG, SEC31L2, CD3Z, PRKCQ, SH2D1A, GZMB, CD1A, GATA2, LY9, LAIR1, TRB@, SEPT6, HA-1, SLC43A3, DOCK2, CG018, MLC1, CD3D, T3JAM, CD6, ZAP70, DOK2, LST1, GPR65, PRF1, ALMS1, AIF1, PRDX2, FLJ12151, FBXW12, CD1E, CYFIP2, TARP, TRIM, RPL10L, GLTSCR2, CKIP-1, NRN1, ARHGAP15, NOTCH1, PSCD4, C13orf18, BCL11B, GIMAP6, STAG3, NARF, TM6SF1, C15orf25, FLJ11795, SAMSN1, UBASH3A, PACAP, LEF1, IL21R, TCF4, and DKFZP434B0335, and, optionally, a third gene selected from at least one of FLJ10534, PTPRC, CD27BP, TRIM22, TRIM41, PSCD2L, CD1C, MYBBP1A, ICAM3, CD53, FARSLA, GAS7, ABCD2, CD24, CD29, RAC2, CD37, GNA15, PGF, LAPTM5, RPL18A, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GNA15, ITK, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, GNA15, TCF7, ITGB2, PTPRC, HCLS1, PRKCB1, ATP2A3, PRKCBI, MYBL1, and FARSLA, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, Hcd517, Hcd796, HUMTRF, hsa-mir-20b, hsa-mir-019b-2-prec, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, Hcd148_HPR225 left, HUMTRAB, Hcd975, hsa-mir-135-2-prec, hsa-mir-128b-prec, hsa-mir-143-prec, hsa-mir-025-prec, hsa-mir-216-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, HSHELA01, HUMTRV1A, hsa-mir-223-prec, Hcd754, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Carmustine.
51. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of RPS15, INSIG1, ALDOC, ITM2A, C1QR1, STAT5A, INPP5D, VPS16, SLA, USP20, IL2RG, MFNG, LRMP, EVI2A, PTPN7, ARHGAP25, RHOH, ZNFN1A1, CENTBI, LCP2, SPIT, ARHGAP6, MAP4K1, CCR7, LY96, C6orf32, MAGEA1, SP140, LCP1, IFI16, ARHGEF6, PSCDBP, SELPLG, CD3Z, PRKCQ, GZMB, LAIR1, SH2DIA, TRB@, RFP, SEPT6, HA-1, SLC43A3, CD3D, T3JAM, GPR65, PRF1, AIF1, LPXN, RPL10L, SITPEC, ARHGAP15, C13orf18, NARF, TM6SF1, PACAP, and TCF4, and, optionally, a third gene selected from at least one of PTPRC, ICAM3, TRFP, CD53, FARSLA, RAC2, MAGEA11, LAPTM5, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, PTPRC, HCLS1, SLC19A1, FARSLA, and RPS15A, or
ii) a second microRNA selected from at least one of hsa-mir-101-prec-9, Hcd796, hsa-mir-20b, HUMTRAB, hsa-mir-135-2-prec, hsa-mir-153-1-prec1, hsa-mir-025-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, HUMTRV1A, Hcd754, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Lomustine.
52. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of SSRP1, ALDOC, C1QR1, TTF1, PRIM1, USP34, TK2, GOLGIN-67, NPD014, KIAA0220, SLC43A3, WBSCR20C, ICAM2, TEX10, CHD7, SAMSN1, and TPRT, and, optionally, a third gene selected from at least one of PTPRC, CD53, RNPS1, H3F3A, NUDC, SMARCA4, RPL32, PTMA, CD53, PTPRCAP, PTPRC, RPL32, PTPRCAP, PTPRC, CD53, PTPRC, HCLS1, and SLC19A1, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-096-prec-7, hsa-mir-123-prec, MPR249, HPR232, hsa-mir-101-prec-9, hsa-mir-106a, hsa-mir-20b, Hcd861, hsa-mir-017-prec, hsa-mir-019b-2-prec, hsa-mir-033-prec, Hcd102, MPR216, Hcd975, hsa-mir-019b-1-prec, hsa-mir-135-2-prec, Hcd581, Hcd536_HPR104, hsa-mir-128b-prec, HSTRNL, hsa-mir-025-prec, hsa-mir-18b, HPR262, Hcd923, Hcd434, Hcd658, HPR129, hsa-mir-380-5p, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, Hcd627, hsa-mir-142-prec, hsa-mir-018-prec, and hsa-mir-020-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Mercaptopurine.
53. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CD99, INSIG1, PRG1, ALDOC, ITM2A, SLA, SSBP2, IL2RG, MFNG, ALOX5AP, C1 orf29, SELL, STC1, LRMP, MYB, PTPN7, CXorf9, RHOH, ZNFN1A1, CENTBI, ADD2, CD1D, BATF, MAP4K1, CCR7, PDE4C, CD3G, CCR9, SP110, TNFAIP8, NAP1L1, CXCR4, ARHGEF6, GATA3, SELPLG, SEC31L2, CD3Z, SH2D1A, GZMB, CDIA, SCN3A, LAIR1, AF1Q, TRB@, DOCK2, MLC1, CD3D, T3JAM, CD6, ZAP70, IFI44, GPR65, PRF1, A1F1, WDR45, CD1E, CYFIP2, TARP, TRIM, ARHGAP15, NOTCH1, STAG3, NARF, TM6SF1, UBASH3A, and MGC5566, and, optionally, a third gene selected from at least one of FLJ10534, PTPRC, TRIM22, C18orf1, TRIM41, LAT, CDIC, MYBBP1A, CD53, FARSLA, PPP2CA, COL5A2, LAPTM5, CD53, CORO1A, PTPRCAP, PTPRC, HEM1, GMFG, ITK, CDIB, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, HEM1, TCF7, PTPRC, HCLS1, ATP2A3, MYBL1, and FARSLA, or
ii) a second microRNA selected from at least one of hsa-mir-124a-3-prec, Hcd768, HUMTRF, hsa-mir-213-prec, hsa-mir-181b-prec, Hcd783, hsa-mir-212-prec, hsa-mir-124a-1-prec1, hsa-mir-342, hsa-mir-142-prec, HSHELA01, hsa-mir-223-prec, and Hcd754,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Teniposide.
54. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ALDOC, C1QR1, SLA, WBSCR20A, MFNG, SELL, MYB, RHOH, ZNFNIA1, LCP2, MAP4K1, CBFA2T3, LCP1, SELPLG, CD3Z, LAIR1, WBSCR20C, CD3D, GPR65, ARHGAP15, FLJ10178, NARF, and PUS3, and, optionally, a third gene selected from at least one of PTPRC, MYBBP1A, ICAM3, CD53, FARSLA, CD53, PTPRCAP, PTPRC, HEM1, GMFG, GMFG, PTPRCAP, PTPRC, CD53, HEM1, PTPRC, HCLS1, PRKCB1, PRKCB1, MYBL1, and FARSLA, or
ii) a second microRNA selected from at least one of hsa-mir-025-prec, hsa-mir-007-1-prec, hsa-mir-093-prec-7.1=093-1, Hcd794, and hsa-mir-142-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Dactinomycin.
55. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of PPIB, ZFP36L2, IFI30, USP7, SRM, SH3BP5, ALDOC, FADS2, GUSB, PSCD1, IQGAP2, STS, MFNG, FLI1, PIM2, INPP4A, LRMP, ICAM2, EVI2A, MAL, BTN3A3, PTPN7, IL10RA, SPI1, TRAF1, ITGB7, ARHGAP6, MAP4K1, CD28, PTP4A3, LTB, C1orf38, WBSCR22, CD8B1, LCP1, FLJ3052, MEF2C, PSCDBP, IL16, SELPLG, MAGEA9, LAIR1, TNFRSF25, EVI2B, IGJ, PDCD4, RASA4, HA-1, PLCL2, RNASE6, WBSCR20C, NUP210, RPL10L, C11orf2, CABC1, ARHGEF3, TAPBPL, CHST12, FKBP11, FLJ35036, MYL1P, TXNDC5, PACAP, TOSO, PNAS-4, IL21R, and TCF4, and, optionally, a third gene selected from at least one of CLTB, BTN3A2, BCL2, SETBP1, ICAM3, BCL2, BCL2, BCL2, CD53, CCND2, CLTB, CLTB, BCL2L11, BTN3A2, CD37, MYCL2, CTSS, LAPTM5, CD53, CORO1A, HEM1, CD53, CORO1A, HEM1, HCLS1, BCL2L11, MYCL1, MYC, and MAN1A1, or
ii) a second microRNA selected from at least one of Hcd257, hsa-mir-148-prec, Hcd512, HPR227, Hcd421, MPR203, hsa-mir-017-prec, hsa-mir-219-2, hsa-mir-328, Hcd783, Hcd181, HPR213, hsa-mir-191-prec, hsa-mir-375, hsa-mir-212-prec, Hcd913, Hcd716, MPR207, HPR206, hsa-mir-016b-chr3, Hcd654, hsa-mir-195-prec, Hcd425, hsa-mir-148a, hsa-mir-142-prec, and hsa-mir-016a-chr13,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Tretinoin.
56. The method of claim 1, wherein said measuring further comprises determining a level of expression of a second gene selected from at least one of PDGFRB, KDR, KIT, and FLT3, and, optionally, a third gene selected from at least one of FLT1, FLT4, PDGFRA, and CSF1R,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene indicates that said cell is sensitive to sunitinib.
57. The method of claim 1, wherein said measuring further comprises determining a level of expression of BCL2,
wherein an increase or decrease in said level of expression of said BCL2 indicates that said cell is sensitive to SPC2996.
58. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of ARHGDIB, ZFP36L2, ITM2A, LGALS9, INPP5D, SATB1, TFDP2, IL2RG, CD48, SELL, ADA, LRMP, RIMS3, LCK, CXorf9, RHOH, ZNFN1A1, LCP2, CD1D, CD2, ZNF91, MAP4K1, CCR7, IGLL1, CD3G, ZNF430, CCR9, CXCR4, KIAA0922, TARP, FYN, SH2D1A, CDIA, LST1, LA1R1, TRB@, SEPT6, CD3D, CD6, AIF1, CD1E, TRIM, GLTSCR2, ARHGAP15, BIN2, SH3TC1, CECR1, BCL11B, GIMAP6, STAG3, GALNT6, MGC5566, PACAP, and LEF1, and, optionally, a third gene selected from at least one of CD27BP, TRIM22, TRA@, C18 orf1, EVL, PRKCH, TRIM41, PSCD2L, CD1C, ADAM11, ABCD2, CD24, CD29, CD37, GNA15, LAPTM5, CORO1A, HEM1, GMFG, GNA15, CD1B, GMFG, CORO1A, HEM1, GNA15, ITGB2, PRKCB1, ATP2A3, and PRKCB1, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, hsa-mir-181b-2, Hcd417, Hcd440_HPR257, hsa-mir-019b-2-prec, hsa-mir-213-prec, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, hsa-mir-181b-prec, hsa-mir-128b-prec, hsa-mir-526a-2, MPR95, HPR220, hsa-mir-133a-1, hsa-mir-148a, hsa-mir-142-prec, HPR169, hsa-mir-223-prec, hsa-mir-018-prec, hsa-mir-020-prec, and hsa-mir-484,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Ifosfamide.
59. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of MLP, GLUL, SLC9A3R1, ZFP36L2, INSIG1, TBL1X, NDUFAB1, ESP, TRIM14, SRPK2, PMM2, CLDN3, GCH1, IDI1, TTF1, MYB, RASGRP1, HIST1H3H, CBFA2T3, SRRM2, ANAPC5, MBD4, GATA3, HIST1H2BG, RAB14, PIK3R1, MGC50853, ELF1, ZRF1, ZNF394, S100A14, SLC6A14, GALNT6, SPDEF, TPRT, and CALML4, and, optionally, a third gene selected from at least one of EIF4A1, TFF1, TFF1, MYBBP1A, AKAP1, DGKZ, EIF4A1, KIAA0182, SLC19A1, ATP2A3, MYBL1, EIF4EBP2, GIP2, and MANIA1, or
ii) a second microRNA selected from at least one of hsa-mir-092-prec-X=092-2, Hcd547, Hcd257, hsa-mir-148-prec, HUMTRS, hsa-mir-033-prec, hsa-mir-092-prec-13=092-1, hsa-mir-375, hsa-mir-095-prec-4, hsa-mir-025-prec, hsa-mir-202-prec, hsa-mir-007-1-prec, hsa-mir-093-prec-7.1=093-1, hsa-mir-106-prec-X, hsa-mir-142-prec, hsa-mir-223-prec, and hsa-mir-018-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Tamoxifen.
60. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CSDA, F8A1, KYNU, PHF14, SERPINB2, OPHN1, HRMT1L2, TNFRSF1A, PPP4C, CES1, TP53AP1, TM4SF4, RPL5, BC008967, TLK2, COL4A6, PAK3, RECK, LOC51321, MST4, DERP6, SCD4, and FLJ22800, and, optionally, a third gene selected from at least one of STC2, BAX, CDKN1A, DDB2, RGS2, BAX, BAX, RPL13, RPL13, CDKN1A, and GABPB2, or
ii) a second microRNA selected from at least one of HUMTRF, HUMTRN, hsa-mir-124a-1-prec1, hsa-mir-150-prec, Hcd923, HPR181, Hcd569, hsa-mir-199a-2-prec, Hcd754, and hsa-mir-4323p,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Floxuridine.
61. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of CSDA, UBE2L6, TAP1, RPS19, SERPINA1, C1QR1, SLA, GPSM3, PSMB9, EDG1, FMNL1, PTPN7, ZNFN1A1, CENTB1, BATE, MAP4K1, PDE4C, SP110, HLA-DRA, IFI16, HLA-DRB1, ARHGEF6, SELPLG, SEC31L2, CD3Z, PRKCQ, SH2DIA, GZMB, TRB@, HLA-DPA1, AIM1, DOCK2, CD3D, IFITM1, ZAP70, PRF1, C1orf24, ARHGAP15, C13orf18, and TM6SF1, and, optionally, a third gene selected from at least one of PTPRC, TRIM22, PSME2, LAT, METAP1, CD53, FARSLA, RPL13, RAC2, RPL13, PTMA, CD53, CORO1A, PTPRCAP, PTPRC, GMFG, ITK, GMFG, PTPRCAP, PTPRC, CD53, CORO1A, ITGB2, PTPRC, HCLS1, and FARSLA, or
ii) a second microRNA selected from at least one of HUMTRF, hsa-mir-380-5p, hsa-mir-342, hsa-mir-142-prec, and Hcd200,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to lrinotecan.
62. The method of claim 1, wherein said measuring further comprises determining a level of expression of:
i) a second gene selected from at least one of STAT1, HSBP1, IF130, RIOK3, TNFSF10, ALOX5AP, ADFP, IRS2, EFEMP2, RIPK2, DKFZp56411922, MT1K, RNASET2, EFHD2, TRIB3, ACSL5, IFIH1, and DNAPTP6, and, optionally, a third gene selected from at least one of IFI27, OPTN, C20orf18, FN1, LOC0051123, FN1, OPTN, and OPTN, or
ii) a second microRNA selected from at least one of Hcd289, Hcd939, Hcd330, HPR76, Hcd111, Hcd976, hsa-mir-15a, hsa-mir-001b-1-prec1, hsa-mir-450-1, hsa-mir-200b, Hcd578, and hsa-mir-200a-prec,
wherein an increase or decrease in said level of expression of said second gene and, optionally, said third gene or said second microRNA indicates that said cell is sensitive to Satraplatin.
63. The method of claim 1, wherein said level of expression of said gene is determined by detecting the level of mRNA transcribed from said gene.
64. The method of claim 1, wherein said level of expression of said gene is determined by detecting the level of a protein product of said gene.
65. The method of claim 1, wherein said level of expression of said gene is determined by detecting the level of the biological activity of a protein product of said gene.
66. The method of claim 1, wherein an increase in the level of expression of said gene or microRNA indicates increased sensitivity of said cell to said treatment.
67. The method of claim 1, wherein said cell is a cancer cell.
68. The method of claim 1, wherein a decrease in the level of expression of said gene or microRNA indicates increased sensitivity of said cell to said treatment.
69. The method of claim 1, wherein said level of expression of said gene or microRNA is measured using a quantitative reverse transcription-polymerase chain reaction (qRT-PCR).
70. The method of claim 1, wherein said measuring further comprises further determining a level of expression of:
i) a second gene selected from at least one of ACTB, ACTN4, ADA, ADAM9, ADAMTS1, ADD1, AF1Q, A1F1, AKAP1, AKAP13, AKR1C1, AKT1, ALDH2, ALDOC, ALG5, ALMS1, ALOX15B, AMIGO2, AMPD2, AMPD3, ANAPC5, ANP32A, ANP32B, ANXA1, AP1G2, APOBEC3B, APRT, ARHE, ARHGAP15, ARHGAP25, ARHGDIB, ARHGEF6, ARL7, ASAH1, ASPH, ATF3, ATIC, ATP2A2, ATP2A3, ATP5D, ATP5G2, ATP6V1B2, BC008967, BCAT1, BCHE, BCL11B, BDNF, BHLHB2, BIN2, BLMH, BMI1, BNIP3, BRDT, BRRN1, BTN3A3, C11orf2, C14orf139, C15orf25, C18orf10, C1orf24, C1orf29, C1orf38, C1QR1, C22orf18, C6orf32, CACNA1G, CACNB3, CALM1, CALML4, CALU, CAP350, CASP2, CASP6, CASP7, CAST, CBLB, CCNA2, CCNB11P1, CCND3, CCR7, CCR9, CD1A, CD1C, CD1D, CD1E, CD2, CD28, CD3D, CD3E, CD3G, CD3Z, CD44, CD47, CD59, CD6, CD63, CD8A, CD8B1, CD99, CDC10, CDCl4B, CDH11, CDH2, CDKL5, CDKN2A, CDW52, CECR1, CENPB, CENTB1, CENTG2, CEP1, CG018, CHRNA3, CHS1, CIAPIN1, CKAP4, CKIP-1, CNP, COL4A1, COL5A2, COL6A1, CORO1C, CRABP1, CRK, CRY1, CSDA, CTBP1, CTSC, CTSL, CUGBP2, CUTC, CXCL1, CXCR4, CXorf9, CYFIP2, CYLD, CYR61, DATF1, DAZAP1, DBN1, DBT, DCTN1, DDX18, DDX5, DGKA, DIAPH1, DKC1, DKFZP434J154, DKFZP564C186, DKFZP564G2022, DKFZp564J157, DKFZP564K0822, DNAJC10, DNAJC7, DNAPTP6, DOCK10, DOCK2, DPAGT1, DPEP2, DPYSL3, DSIPI, DUSP1, DXS9879E, EEF1B2, EFNB2, EHD2, EIF5A, ELK3, ENO2, EPAS1, EPB41L4B, ERCC2, ERG, ERP70, EVER1, EVI2A, EVL, EXT1, EZH2, F2R, FABP5, FAD104, FAM46A, FAU, FCGR2A, FCGR2C, FER1L3, FHL1, FHOD1, FKBP1A, FKBP9, FLJ10350, FLJ10539, FLJ10774, FLJ12270, FLJ13373, FLJ20859, FLJ21159, FLJ22457, FLJ35036, FLJ46603, FLNC, FLOT1, FMNL1, FNBP1, FOLH1, FOXF2, FSCN1, FTL, FYB, FYN, GOS2, G6PD, GALIG, GALNT6, GATA2, GATA3, GFPT1, GIMAP5, GIT2, GJA1, GLRB, GLTSCR2, GLUL, GMDS, GNAQ, GNB2, GNB5, GOT2, GPR65, GPRASP1, GPSM3, GRP58, GSTM2, GTF3A, GTSE1, GZMA, GZMB, H1F0, H1FX, H2AFX, H3F3A, HA-1, HEXB, HIC, HIST1H4C, HK1, HLA-A, HLA-B, HLA-DRA, HMGA1, HMGN2, HMMR, HNRPA1, HNRPD, HNRPM, HOXA9, HRMT1L1, HSA9761, HSPA5, HSU79274, HTATSF1, ICAM1, ICAM2, IER3, IFI16, IFI44, IFITM2, IFITM3, IFRG28, IGFBP2, IGSF4, IL13RA2, IL21R, IL2RG, IL4R, IL6, IL6R, IL6ST, IL8, IMPDH2, INPP5D, INSIG1, IQGAP1, IQGAP2, IRS2, ITGA5, ITM2A, JARID2, JUNB, K-ALPHA-1, KHDRBS1, KIAA0355, KIAA0802, KIAA0877, KIAA0922, KIAA1078, KIAA1128, KIAA1393, KIFC1, LAIR1, LAMB1, LAMB3, LAT, LBR, LCK, LCP1, LCP2, LEF1, LEPRE1, LGALS1, LGALS9, LHFPL2, LNK, LOC54103, LOC55831, LOC81558, LOC94105, LONP, LOX, LOXL2, LPHN2, LPXN, LRMP, LRP12, LRRC5, LRRN3, LST1, LTB, LUM, LY9, LY96, MAGEB2, MAL, MAP1B, MAP1 LC3B, MAP4K1, MAPK1, MARCKS, MAZ, MCAM, MCL1, MCM5, MCM7, MDH2, MDN1, MEF2C, MFNG, MGC17330, MGC21654, MGC2744, MGC4083, MGC8721, MGC8902, MGLL, MLPH, MPHOSPH6, MPP1, MPZL1, MRP63, MRPS2, MT1E, MT1K, MUF1, MVP, MYB, MYL9, MYO1B, NAP1L1, NAP1L2, NARF, NASP, NCOR2, NON, NDUFAB1, NDUFS6, NFKB1A, NID2, NIPA2, NME4, NME7, NNMT, NOL5A, NOL8, NOMO2, NOTCH1, NPC1, NQO1, NRID2, NUDC, NUP210, NUP88, NVL, NXF1, OBFC1, OCRL, OGT, OXA1L, P2RX5, P4HA1, PACAP, PAF53, PAFAH1B3, PALM2-AKAP2, PAX6, PCBP2, PCCB, PFDN5, PFN1, PFN2, PGAM1, PHEMX, PHLDA1, PIM2, PITPNC1, PLAC8, PLAGL1, PLAUR, PLCB1, PLEK2, PLEKHC1, PLOD2, PLSCR1, PNAS-4, PNMA2, POLR2F, PPAP2B, PRF1, PRG1, PRIM1, PRKCH, PRKCQ, PRKD2, PRNP, PRP19, PRPF8, PRSS23, PSCDBP, PSMB9, PSMC3, PSME2, PTGER4, PTGES2, PTOV1, PTP4A3, PTPN7, PTPNS1, PTRF, PURA, PWP1, PYGL, QKI, RAB3GAP, RAB7L1, RAB9P40, RAC2, RAFTLIN, RAG2, RAP1B, RASGRP2, RBPMS, RCN1, RFC3, RFC5, RGC32, RGS3, RHOH, RIMS3, RIOK3, RIPK2, RIS1, RNASE6, RNF144, RPL10, RPL10A, RPL12, RPL13A, RPL17, RPL18, RPL36A, RPLP0, RPLP2, RPS15, RPS19, RPS2, RPS4X, RPS4Y1, RRAS, RRAS2, RRBP1, RRM2, RUNX1, RUNX3, S100A4, SART3, SATB1, SCAP1, SCARB1, SCN3A, SEC31L2, SEC61G, SELL, SELPLG, SEMA4G, SEPT10, SEPT6, SERPINA1, SERPINB1, SERPINB6, SFRS5, SFRS6, SFRS7, SH2D1A, SH3GL3, SH3TC1, SHD1, SHMT2, SIAT1, SKBI, SKP2, SLA, SLC1A4, SLC20A1, SLC25A15, SLC25A5, SLC39A14, SLC39A6, SLC43A3, SLC4A2, SLC7A11, SLC7A6, SMAD3, SMOX, SNRPA, SNRPB, SOD2, SOX4, SP140, SPANXC, SPI1, SRF, SRM, SSA2, SSBP2, SSRP1, SSSCA1, STAGS, STAT1, STAT4, STAT5A, STC1, STC2, STOML2, T3JAM, TACC1, TACC3, TAF5, TAL1, TAP1, TARP, TBCA, TCF12, TCF4, TFDP2, TFPI, TIMM17A, TIMP1, TJP1, TK2, TM4SF1, TM4SF2, TM4SF8, TM6SF1, TMEM2, TMEM22, TMSB10, TMSNB, TNFAIP3, TNFAIP8, TNFRSF10B, TNFRSF1A, TNFRSF7, TNIK, TNPO1, TOB1, TOMM20, TOX, TPK1, TPM2, TRA@, TRA1, TRAM2, TRB@, TRD@, TRIM, TRIM14, TRIM22, TRIM28, TRIP13, TRPV2, TUBGCP3, TUSC3, TXN, TXNDC5, UBASH3A, UBE2A, UBE2L6, UBE2S, UCHL1, UCK2, UCP2, UFD1L, UGDH, ULK2, UMPS, UNG, USP34, USP4, VASP, VAV1, VLDLR, VWF, WASPIP, WBSCR20A, WBSCR20C, WHSC1, WNT5A, ZAP70, ZFP36L1, ZNF32, ZNF335, ZNF593, ZNFN1A1, and ZYX; or
ii) a second microRNA selected from at least one of ath-MIR180aNo2, Hcd102 left, Hcd111 left, Hcd115 left, Hcd120 left, Hcd142 right, Hcd145 left, Hcd148_HPR225 left, Hcd181 left, Hcd181 right, Hcd210_HPR205 right, Hcd213_HPR182 left, Hcd230 left, Hcd243 right, Hcd246 right, Hcd248 right, Hcd249 right, Hcd250 left, Hcd255 left, Hcd257 left, Hcd257 right, Hcd263 left, Hcd266 left, Hcd270 right, Hcd279 left, Hcd279 right, Hcd28_HPR39 left, Hcd28_HPR39 right, Hcd282PO right, Hcd289 left, Hcd294 left, Hcd318 right, Hcd323 left, Hcd330 right, Hcd338 left, Hcd340 left, Hcd350 right, Hcd355_HPR190 left, Hcd361 right, Hcd366 left, Hcd373 right, Hcd383 left, Hcd383 right, Hcd384 left, Hcd397 left, Hcd404 left, Hcd412 left, Hcd413 right, Hcd415 right, Hcd417 right, Hcd421 right, Hcd425 left, Hcd438 right, Hcd434 right, Hcd438 left, Hcd440_HPR257 right, Hcd444 right, Hcd447 right, Hcd448 left, Hcd498 right, Hcd503 left, Hcd511 right, Hcd512 left, Hcd514 right, Hcd517 left, Hcd517 right, Hcd530 right, Hcd536_HPR104 right, Hcd542 left, Hcd544 left, Hcd547 left, Hcd559 right, Hcd562 right, Hcd569 right, Hcd570 right, Hcd578 right, Hcd581 right, Hcd586 left, Hcd586 right, Hcd587 right, Hcd605 left, Hcd605 left, Hcd605 right, Hcd608 right, Hcd627 left, Hcd631 left, Hcd631 right, Hcd634 left, Hcd642 right, Hcd649 right, Hcd654 left, Hcd658 right, Hcd669 right, Hcd674 left, Hcd678 right, Hcd683 left, Hcd684 right, Hcd689 right, Hcd690 right, Hcd691 right, Hcd693 right, Hcd697 right, Hcd704 left, Hcd704 left, Hcd712 right, Hcd716 right, Hcd731 left, Hcd738 left, Hcd739 right, Hcd739 right, Hcd749 right, Hcd753 left, Hcd754 left, Hcd755 left, Hcd760 left, Hcd763 right, Hcd768 left, Hcd768 right, Hcd770 left, Hcd773 left, Hcd777 left, Hcd778 right, Hcd781 left, Hcd781 right, Hcd782 left, Hcd783 left, Hcd788 left, Hcd794 right, Hcd796 left, Hcd799 left, Hcd807 right, Hcd812 left, Hcd817 left, Hcd817 right, Hcd829 right, Hcd852 right, Hcd861 right, Hcd863PO right, Hcd866 right, Hcd869 left, Hcd873 left, Hcd886 right, Hcd889 right, Hcd891 right, Hcd892 left, Hcd913 right, Hcd923 left, Hcd923 right, Hcd938 left, Hcd938 right, Hcd939 right, Hcd946 left, Hcd948 right, Hcd960 left, Hcd965 left, Hcd970 left, Hcd975 left, Hcd976 right, Hcd99 right, HPR100 right, HPR129 left, HPR154 left, HPR159 left, HPR163 left, HPR169 right, HPR172 right, HPR181 left, HPR187 left, HPR199 right, HPR206 left, HPR213 right, HPR214 right, HPR220 left, HPR220 right, HPR227 right, HPR232 right, HPR233 right, HPR244 right, HPR262 left, HPR264 right, HPR266 right, HPR271 right, HPR76 right, hsa_mir490_Hcd20 right, HSHELA01, HSTRNL, HUMTRAB, HUMTRF, HUMTRN, HUMTRS, HUMTRVIA, let-7f-2-prec2, mir-001b-1-prec1, mir-001b-2-prec, mir-007-1-prec, mir-007-2-precNo2, mir-010a-precNo1, mir-015b-precNo2, mir-016a-chr13, mir-016b-chr3, mir-017-precNo1, mir-017-precNo2, mir-018-prec, mir-019a-prec, mir-019b-1-prec, mir-019b-2-prec, mir-020-prec, mir-022-prec, mir-023a-prec, mir-023b-prec, mir-024-2-prec, mir-025-prec, mir-027b-prec, mir-029c-prec, mir-032-precNo2, mir-033b-prec, mir-033-prec, mir-034-precNo1, mir-034-precNo2, mir-092-prec-13=092-1No2, mir-092-prec-X=092-2, mir-093-prec-7.1=093-1, mir-095-prec-4, mir-096-prec-7No1, mir-096-prec-7No2, mir-098-prec-X, mir-099b-prec-19No1, mir-100-1/2-prec, mir-100No1, mir-101-prec-9, mir-102-prec-1, mir-103-2-prec, mir-103-prec-5=103-1, mir-106aNo1, mir-106-prec-X, mir-107No1, mir-107-prec-10, mir-122a-prec, mir-123-precNo1, mir-123-precNo2, mir-124a-1-prec1, mir-124a-2-prec, mir-124a-3-prec, mir-125b-1, mir-125b-2-precNo2, mir-127-prec, mir-128b-precNo1, mir-128b-precNo2, mir-133a-1, mir-135-2-prec, mir-136-precNo2, mir-138-1-prec, mir-140No2, mir-143-prec, mir-144-precNo2, mir-145-prec, mir-146bNo1, mir-146-prec, mir-147-prec, mir-148aNo1, mir-148-prec, mir-149-prec, mir-150-prec, mir-153-1-prec1, mir-154-prec1No1, mir-155-prec, mir-15aNo1, mir-16-1No1, mir-16-2No1, mir-181a-precNo1, mir-181b-1No1, mir-181b-2No1, mir-181b-precNo1, mir-181b-precNo2, mir-181c-precNo1, mir-181dNo1, mir-188-prec, mir-18bNo2, mir-191-prec, mir-192No2, mir-193bNo2, mir-194-2No1, mir-195-prec, mir-196-2-precNo2, mir-197-prec, mir-198-prec, mir-199a-1-prec, mir-199a-2-prec, mir-199b-precNo1, mir-200a-prec, mir-200bNo1, mir-200bNo2, mir-202*, mir-202-prec, mir-204-precNo2, mir-205-prec, mir-208-prec, mir-20bNo1, mir-212-precNo1, mir-212-precNo2, mir-213-precNo1, mir-214-prec, mir-215-precNo2, mir-216-precNo1, mir-219-2No1, mir-219-prec, mir-223-prec, mir-29b-1No1, mir-29b-2=102prec7.1=7.2, mir-321No1, mir-321No2, mir-324No1, mir-324No2, mir-328No1, mir-342No1, mir-361No1, mir-367No1, mir-370No1, mir-371No1, miR-373*No1, mir-375, mir-376aNo1, mir-379No1, mir-380-5p, mir-382, mir-384, mir-409-3p, mir-423No1, mir-424No2, mir-429No1, mir-429No2, mir-4323p, mir-4325p, mir-449No1, mir-450-1, mir-450-2No1, mir-483No1, mir-484, mir-487No1, mir-495No1, mir-499No2, mir-501No2, mir-503No1, mir-509No1, mir-514-1No2, mir-515-15p, mir-515-23p, mir-516-33P, mir-516-43p, mir-518e/526c, mir-519a-1/52, mir-519a-2No2, mir-519b, mir-519c152, mir-520c/52, mir-526a-2No1, mir-526a-2No2, MPR103 right, MPR121 left, MPR121 left, MPR130 left, MPR130 right, MPR133 right, MPR141 left, MPR151 left, MPR156 left, MPR162 left, MPR174 left, MPR174 right, MPR185 right, MPR197 right, MPR203 left, MPR207 right, MPR215 left, MPR216 left, MPR224 left, MPR224 right, MPR228 left, MPR234 right, MPR237 left, MPR243 left, MPR244 right, MPR249 left, MPR254 right, MPR74 left, MPR88 right, and MPR95 left,
wherein an increase or decrease in said level of expression of said second gene or said second microRNA indicates said cell is sensitive to said treatment.
71. The method of claim 1, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 20 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFN1A1.
72. The method of claim 71, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 25 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFN1A1.
73. The method of claim 1, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 2300.
74. The method of claim 1, wherein said device further comprises at least one single-stranded oligonucleotide that is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 1, 2, 4, 6, 7, 10, 11, 16, or 24.
75. A method for determining the development of resistance of cells in a patient to a treatment to which said cells have previously been sensitive, said method comprising contacting a sample comprising one or more nucleic acid molecules from said patient to a device comprising single-stranded oligonucleotides, wherein at least one of said oligonucleotides comprises a sequence that is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of a first microRNA selected from mir-142-prec or a product of a first gene selected from ZNFN1A1, and measuring hybridization between said nucleic acid molecules from said patient and said single-stranded oligonucleotides of said device to determine a level of expression of said first microRNA or said first gene in at least one of said cells, wherein a decrease in said level of expression of said first microRNA or said first gene in at least one of said cells, relative to the level of expression of said first microRNA or said first gene in a control cell sensitive to said treatment, indicates resistance or a propensity to develop resistance to the treatment by said patient and, optionally, wherein said method further comprises measuring a level of expression of at least one second gene in at least one of said cells selected from:
ACTB, ACTN4, ADA, ADAM9, ADAMTS1, ADD1, AF1Q, AIF1, AKAP1, AKAP13, AKR1C1, AKT1, ALDH2, ALDOC, ALG5, ALMS1, ALOX15B, AMIGO2, AMPD2, AMPD3, ANAPC5, ANP32A, ANP32B, ANXA1, APIG2, APOBEC3B, APRT, ARHE, ARHGAP15, ARHGAP25, ARHGD1B, ARHGEF6, ARL7, ASAH1, ASPH, ATF3, ATIC, ATP2A2, ATP2A3, ATP5D, ATP5G2, ATP6V1B2, BC008967, BCAT1, BCHE, BCL11B, BDNF, BHLHB2, BIN2, BLMH, BMI1, BNIP3, BRDT, BRRN1, BTN3A3, C11orf2, C14orf139, C15orf25, C18orf10, C1orf24, C1orf29, C1orf38, C1QR1, C22orf18, C6orf32, CACNA1G, CACNB3, CALM1, CALML4, CALU, CAP350, CASP2, CASP6, CASP7, CAST, CBLB, CCNA2, CCNB1IP1, CCND3, CCR7, CCR9, CDIA, CD1C, CD1D, CD1E, CD2, CD28, CD3D, CD3E, CD3G, CD3Z, CD44, CD47, CD59, CD6, CD63, CD8A, CD8B1, CD99, CDC10, CDCl4B, CDH11, CDH2, CDKL5, CDKN2A, CDW52, CECR1, CENPB, CENTB1, CENTG2, CEP1, CG018, CHRNA3, CHS1, CIAPIN1, CKAP4, CKIP-1, CNP, COL4A1, COL5A2, COL6A1, CORO1C, CRABP1, CRK, CRY1, CSDA, CTBP1, CTSC, CTSL, CUGBP2, CUTC, CXCL1, CXCR4, CXorf9, CYFIP2, CYLD, CYR61, DATF1, DAZAP1, DBN1, DBT, DCTN1, DDX18, DDX5, DGKA, DIAPH1, DKC1, DKFZP434J154, DKFZP564C186, DKFZP564G2022, DKFZp564J157, DKFZP564K0822, DNAJC10, DNAJC7, DNAPTP6, DOCK10, DOCK2, DPAGT1, DPEP2, DPYSL3, DSIPI, DUSP1, DXS9879E, EEFIB2, EFNB2, EHD2, EIF5A, ELK3, ENO2, EPAS1, EPB41L4B, ERCC2, ERG, ERP70, EVER1, EVI2A, EVL, EXT1, EZH2, F2R, FABP5, FAD104, FAM46A, FAU, FCGR2A, FCGR2C, FER1L3, FHL1, FHOD1, FKBPIA, FKBP9, FLJ10350, FLJ10539, FLJ10774, FLJ12270, FLJ13373, FLJ20859, FLJ21159, FLJ22457, FLJ35036, FLJ46603, FLNC, FLOT1, FMNL1, FNBP1, FOLH1, FOXF2, FSCN1, FTL, FYB, FYN, GOS2, G6PD, GALIG, GALNT6, GATA2, GATA3, GFPT1, GIMAP5, GIT2, GJA1, GLRB, GLTSCR2, GLUL, GMDS, GNAQ, GNB2, GNB5, GOT2, GPR65, GPRASP1, GPSM3, GRP58, GSTM2, GTF3A, GTSE1, GZMA, GZMB, H1F0, H1 FX, H2AFX, H3F3A, HA-1, HEXB, HIC, HIST1H4C, HK1, HLA-A, HLA-B, HLA-DRA, HMGA1, HMGN2, HMMR, HNRPA1, HNRPD, HNRPM, HOXA9, HRMTIL1, HSA9761, HSPA5, HSU79274, HTATSF1, ICAM1, ICAM2, IER3, IFI16, IFI44, IFITM2, IFITM3, IFRG28, IGFBP2, IGSF4, IL13RA2, IL21R, IL2RG, IL4R, IL6, IL6R, IL6ST, IL8, IMPDH2, INPP5D, INSIG1, IQGAP1, IQGAP2, IRS2, ITGA5, ITM2A, JARID2, JUNB, K-ALPHA-1, KHDRBS1, KIAA0355, KIAA0802, KIAA0877, KIAA0922, KIAA1078, KIAA1128, KIAA1393, KIFC1, LA1R1, LAMB1, LAMB3, LAT, LBR, LCK, LCP1, LCP2, LEF1, LEPRE1, LGALS1, LGALS9, LHFPL2, LNK, LOC54103, LOC55831, LOC81558, LOC94105, LONP, LOX, LOXL2, LPHN2, LPXN, LRMP, LRP12, LRRC5, LRRN3, LST1, LTB, LUM, LY9, LY96, MAGEB2, MAL, MAP1B, MAP1LC3B, MAP4K1, MAPK1, MARCKS, MAZ, MCAM, MCL1, MCM5, MCM7, MDH2, MDN1, MEF2C, MFNG, MGC17330, MGC21654, MGC2744, MGC4083, MGC8721, MGC8902, MGLL, MLPH, MPHOSPH6, MPP1, MPZL1, MRP63, MRPS2, MT1E, MT1K, MUF1, MVP, MYB, MYL9, MYO1B, NAPIL1, NAP1L2, NARF, NASP, NCOR2, NDN, NDUFAB1, NDUFS6, NFKB1A, NID2, NIPA2, NME4, NME7, NNMT, NOL5A, NOL8, NOMO2, NOTCH1, NPC1, NQO1, NRID2, NUDC, NUP210, NUP88, NVL, NXF1, OBFC1, OCRL, OGT, OXA1L, P2RX5, P4HA1, PACAP, PAF53, PAFAH1B3, PALM2-AKAP2, PAX6, PCBP2, PCCB, PFDN5, PFN1, PFN2, PGAM1, PHEMX, PHLDA1, PIM2, PITPNC1, PLACE, PLAGL1, PLAUR, PLCB1, PLEK2, PLEKHC1, PLOD2, PLSCR1, PNAS-4, PNMA2, POLR2F, PPAP2B, PRF1, PRG1, PRIM1, PRKCH, PRKCQ, PRKD2, PRNP, PRP19, PRPF8, PRSS23, PSCDBP, PSMB9, PSMC3, PSME2, PTGER4, PTGES2, PTOV1, PTP4A3, PTPN7, PTPNS1, PTRF, PURA, PWP1, PYGL, QKI, RAB3GAP, RAB7L1, RAB9P40, RAC2, RAFTLIN, RAG2, RAP1B, RASGRP2, RBPMS, RCN1, RFC3, RFC5, RGC32, RGS3, RHOH, RIMS3, RIOK3, RIPK2, RIS1, RNASE6, RNF144, RPL10, RPL10A, RPL12, RPL13A, RPL17, RPL18, RPL36A, RPLP0, RPLP2, RPS15, RPS19, RPS2, RPS4X, RPS4Y1, RRAS, RRAS2, RRBP1, RRM2, RUNX1, RUNX3, S100A4, SART3, SATB1, SCAP1, SCARB1, SCN3A, SEC31L2, SEC61G, SELL, SELPLG, SEMA4G, SEPT10, SEPT6, SERPINA1, SERPINB1, SERPINB6, SFRS5, SFRS6, SFRS7, SH2DIA, SH3GL3, SH3TC1, SHD1, SHMT2, SIAT1, SKB1, SKP2, SLA, SLCIA4, SLC20A1, SLC25A15, SLC25A5, SLC39A14, SLC39A6, SLC43A3, SLC4A2, SLC7A11, SLC7A6, SMAD3, SMOX, SNRPA, SNRPB, SOD2, SOX4, SP140, SPANXC, SPI1, SRF, SRM, SSA2, SSBP2, SSRP1, SSSCA1, STAG3, STAT1, STAT4, STAT5A, STC1, STC2, STOML2, T3JAM, TACC1, TACC3, TAF5, TAL1, TAP1, TARP, TBCA, TCF12, TCF4, TFDP2, TFPI, TIMM17A, TIMP1, TJP1, TK2, TM4SF1, TM4SF2, TM4SF8, TM6SF1, TMEM2, TMEM22, TMSB10, TMSNB, TNFAIP3, TNFAIP8, TNFRSF10B, TNFRSF1A, TNFRSF7, TNIK, TNPO1, TOB1, TOMM20, TOX, TPK1, TPM2, TRA@, TRA1, TRAM2, TRB@, TRD@, TRIM, TRIM14, TRIM22, TRIM28, TRIP13, TRPV2, TUBGCP3, TUSC3, TXN, TXNDC5, UBASH3A, UBE2A, UBE2L6, UBE2S, UCHL1, UCK2, UCP2, UFD1L, UGDH, ULK2, UMPS, UNG, USP34, USP4, VASP, VAV1, VLDLR, VWF, WASPIP, WBSCR20A, WBSCR20C, WHSC1, WNT5A, ZAP70, ZFP36L1, ZNF32, ZNF335, ZNF593, ZNFN1A1, and ZYX; or at least one second microRNA in at least one of said cells selected from:
ath-MIR180aNo2, Hcd102 left, Hcd111 left, Hcd115 left, Hcd120 left, Hcdl 42 right, Hcd145 left, Hcd148_HPR225 left, Hcd181 left, Hcd181 right, Hcd210_HPR205 right, Hcd213_HPR182 left, Hcd230 left, Hcd243 right, Hcd246 right, Hcd248 right, Hcd249 right, Hcd250 left, Hcd255 left, Hcd257 left, Hcd257 right, Hcd263 left, Hcd266 left, Hcd270 right, Hcd279 left, Hcd279 right, Hcd28_HPR39 left, Hcd28_HPR39 right, Hcd282PO right, Hcd289 left, Hcd294 left, Hcd318 right, Hcd323 left, Hcd330 right, Hcd338 left, Hcd340 left, Hcd350 right, Hcd355_HPR190 left, Hcd361 right, Hcd366 left, Hcd373 right, Hcd383 left, Hcd383 right, Hcd384 left, Hcd397 left, Hcd404 left, Hcd412 left, Hcd413 right, Hcd415 right, Hcd417 right, Hcd421 right, Hcd425 left, Hcd438 right, Hcd434 right, Hcd438 left, Hcd440_HPR257 right, Hcd444 right, Hcd447 right, Hcd448 left, Hcd498 right, Hcd503 left, Hcd511 right, Hcd512 left, Hcd514 right, Hcd517 left, Hcd517 right, Hcd530 right, Hcd536_HPR104 right, Hcd542 left, Hcd544 left, Hcd547 left, Hcd559 right, Hcd562 right, Hcd569 right, Hcd570 right, Hcd578 right, Hcd581 right, Hcd586 left, Hcd586 right, Hcd587 right, Hcd605 left, Hcd605 left, Hcd605 right, Hcd608 right, Hcd627 left, Hcd631 left, Hcd631 right, Hcd634 left, Hcd642 right, Hcd649 right, Hcd654 left, Hcd658 right, Hcd669 right, Hcd674 left, Hcd678 right, Hcd683 left, Hcd684 right, Hcd689 right, Hcd690 right, Hcd691 right, Hcd693 right, Hcd697 right, Hcd704 left, Hcd704 left, Hcd712 right, Hcd716 right, Hcd731 left, Hcd738 left, Hcd739 right, Hcd739 right, Hcd749 right, Hcd753 left, Hcd754 left, Hcd755 left, Hcd760 left, Hcd763 right, Hcd768 left, Hcd768 right, Hcd770 left, Hcd773 left, Hcd777 left, Hcd778 right, Hcd781 left, Hcd781 right, Hcd782 left, Hcd783 left, Hcd788 left, Hcd794 right, Hcd796 left, Hcd799 left, Hcd807 right, Hcd812 left, Hcd817 left, Hcd817 right, Hcd829 right, Hcd852 right, Hcd861 right, Hcd863PO right, Hcd866 right, Hcd869 left, Hcd873 left, Hcd886 right, Hcd889 right, Hcd891 right, Hcd892 left, Hcd913 right, Hcd923 left, Hcd923 right, Hcd938 left, Hcd938 right, Hcd939 right, Hcd946 left, Hcd948 right, Hcd960 left, Hcd965 left, Hcd970 left, Hcd975 left, Hcd976 right, Hcd99 right, HPR100 right, HPR129 left, HPR154 left, HPR159 left, HPR163 left, HPR169 right, HPR172 right, HPR181 left, HPR187 left, HPR199 right, HPR206 left, HPR213 right, HPR214 right, HPR220 left, HPR220 right, HPR227 right, HPR232 right, HPR233 right, HPR244 right, HPR262 left, HPR264 right, HPR266 right, HPR271 right, HPR76 right, hsa_mir490_Hcd20 right, HSHELA01, HSTRNL, HUMTRAB, HUMTRF, HUMTRN, HUMTRS, HUMTRVIA, let-7f-2-prec2, mir-001b-1-prec1, mir-001b-2-prec, mir-007-1-prec, mir-007-2-precNo2, mir-010a-precNo1, mir-015b-precNo2, mir-016a-chr13, mir-016b-chr3, mir-017-precNo1, mir-017-precNo2, mir-018-prec, mir-019a-prec, mir-019b-1-prec, mir-019b-2-prec, mir-020-prec, mir-022-prec, mir-023a-prec, mir-023b-prec, mir-024-2-prec, mir-025-prec, mir-027b-prec, mir-029c-prec, mir-032-precNo2, mir-033b-prec, mir-033-prec, mir-034-precNo1, mir-034-precNo2, mir-092-prec-13=092-1No2, mir-092-prec-X=092-2, mir-093-prec-7.1=093-1, mir-095-prec-4, mir-096-prec-7No1, mir-096-prec-7No2, mir-098-prec-X, mir-099b-prec-19No1, mir-100-1/2-prec, mir-100No1, mir-101-prec-9, mir-102-prec-1, mir-103-2-prec, mir-103-prec-5=103-1, mir-106aNo1, mir-106-prec-X, mir-107No1, mir-107-prec-10, mir-122a-prec, mir-123-precNo1, mir-123-precNo2, mir-124a-1-prec1, mir-124a-2-prec, mir-124a-3-prec, mir-125b-1, mir-125b-2-precNo2, mir-127-prec, mir-128b-precNo1, mir-128b-precNo2, mir-133a-1, mir-135-2-prec, mir-136-precNo2, mir-138-1-prec, mir-140No2, mir-143-prec, mir-144-precNo2, mir-145-prec, mir-146bNo1, mir-146-prec, mir-147-prec, mir-148aNo1, mir-148-prec, mir-149-prec, mir-150-prec, mir-153-1-prec1, mir-154-prec1No1, mir-155-prec, mir-15aNo1, mir-16-1No1, mir-16-2No1, mir-181a-precNo1, mir-181b-1No1, mir-181b-2No1, mir-181b-precNo1, mir-181b-precNo2, mir-181c-precNo1, mir-181dNo1, mir-188-prec, mir-18bNo2, mir-191-prec, mir-192No2, mir-193bNo2, mir-194-2No1, mir-195-prec, mir-196-2-precNo2, mir-197-prec, mir-198-prec, mir-199a-1-prec, mir-199a-2-prec, mir-199b-precNo1, mir-200a-prec, mir-200bNo1, mir-200bNo2, mir-202*, mir-202-prec, mir-204-precNo2, mir-205-prec, mir-208-prec, mir-20bNo1, mir-212-precNo1, mir-212-precNo2, mir-213-precNo1, mir-214-prec, mir-215-precNo2, mir-216-precNo1, mir-219-2No1, mir-219-prec, mir-223-prec, mir-29b-1No1, mir-29b-2=102prec7.1=7.2, mir-321No1, mir-321No2, mir-324No1, mir-324No2, mir-328No1, mir-342No1, mir-361No1, mir-367No1, mir-370No1, mir-371No1, miR-373*No1, mir-375, mir-376aNo1, mir-379No1, mir-380-5p, mir-382, mir-384, mir-409-3p, mir-423No1, mir-424No2, mir-429No1, mir-429No2, mir-4323p, mir-4325p, mir-449No1, mir-450-1, mir-450-2No1, mir-483No1, mir-484, mir-487No1, mir-495No1, mir-499No2, mir-501No2, mir-503No1, mir-509No1, mir-514-1No2, mir-515-15p, mir-515-23p, mir-516-33p, mir-516-43p, mir-518e/526c, mir-519a-1/52, mir-519a-2No2, mir-519b, mir-519c/52, mir-520c/52, mir-526a-2No1, mir-526a-2No2, MPR103 right, MPR121 left, MPR121 left, MPR130 left, MPR130 right, MPR133 right, MPR141 left, MPR151 left, MPR156 left, MPR162 left, MPR174 left, MPR174 right, MPR185 right, MPR197 right, MPR203 left, MPR207 right, MPR215 left, MPR216 left, MPR224 left, MPR224 right, MPR228 left, MPR234 right, MPR237 left, MPR243 left, MPR244 right, MPR249 left, MPR254 right, MPR74 left, MPR88 right, and MPR95 left,
wherein a decrease in the level of expression of said second gene or said second microRNA in at least one of said cells, relative to the level of expression of said second gene or said second microRNA in a control cell sensitive to said treatment, indicates resistance or a propensity to develop resistance to the treatment by said patient.
76. A method for determining the development of resistance of cells in a patient to a treatment to which said cells have previously been sensitive, said method comprising contacting a sample comprising one or more nucleic acid molecules from said patient to a device comprising single-stranded oligonucleotides, wherein at least one of said oligonucleotides comprises a sequence that is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of a first microRNA selected from mir-142-prec or a product of a first gene selected from ZNFN1A1, and measuring hybridization between said nucleic acid molecules from said patient and said single-stranded oligonucleotides of said device to determine a level of expression of said first microRNA or said first gene in at least one of said cells, wherein an increase in said level of expression of said first microRNA or said first gene in at least one of said cells, relative to the level of expression of said first microRNA or said first gene in a control cell sensitive to said treatment, indicates resistance or a propensity to develop resistance to the treatment by said patient and, optionally, wherein said method further comprises measuring a level of expression of at least one second gene in at least one of said cell selected from:
ACTB, ACTN4, ADA, ADAM9, ADAMTS1, ADD1, AF1Q, A1F1, AKAP1, AKAP13, AKR1C1, AKT1, ALDH2, ALDOC, ALG5, ALMS1, ALOX15B, AMIGO2, AMPD2, AMPD3, ANAPC5, ANP32A, ANP32B, ANXA1, AP1G2, APOBEC3B, APRT, ARHE, ARHGAP15, ARHGAP25, ARHGDIB, ARHGEF6, ARL7, ASAH1, ASPH, ATF3, ATIC, ATP2A2, ATP2A3, ATP5D, ATP5G2, ATP6V1B2, BC008967, BCAT1, BCHE, BCL11B, BDNF, BHLHB2, BIN2, BLMH, BMI1, BNIP3, BRDT, BRRN1, BTN3A3, C11orf2, C14orf139, C15 orf25, C18orf10, C1orf24, C1orf29, C1orf38, C1QR1, C22orf18, C6orf32, CACNA1G, CACNB3, CALM1, CALML4, CALU, CAP350, CASP2, CASP6, CASP7, CAST, CBLB, CCNA2, CCNB1IP1, CCND3, CCR7, CCR9, CD1A, CD1C, CD1D, CD1E, CD2, CD28, CD3D, CD3E, CD3G, CD3Z, CD44, CD47, CD59, CD6, CD63, CD8A, CD8B1, CD99, CDC10, CDCl4B, CDH11, CDH2, CDKL5, CDKN2A, CDW52, CECR1, CENPB, CENTB1, CENTG2, CEP1, CG018, CHRNA3, CHS1, CIAPIN1, CKAP4, CKIP-1, CNP, COL4A1, COL5A2, COL6A1, CORO1C, CRABP1, CRK, CRY1, CSDA, CTBP1, CTSC, CTSL, CUGBP2, CUTC, CXCL1, CXCR4, CXorf9, CYFIP2, CYLD, CYR61, DATF1, DAZAP1, DBN1, DBT, DCTN1, DDX18, DDX5, DGKA, DIAPH1, DKC1, DKFZP434J154, DKFZP564C186, DKFZP564G2022, DKFZp564J157, DKFZP564K0822, DNAJC10, DNAJC7, DNAPTP6, DOCK10, DOCK2, DPAGT1, DPEP2, DPYSL3, DSIPI, DUSP1, DXS9879E, EEFIB2, EFNB2, EHD2, EIF5A, ELK3, ENO2, EPAS1, EPB41L4B, ERCC2, ERG, ERP70, EVER1, EVI2A, EVL, EXT1, EZH2, F2R, FABP5, FAD104, FAM46A, FAU, FCGR2A, FCGR2C, FER1L3, FHL1, FHOD1, FKBP1A, FKBP9, FLJ10350, FLJ10539, FLJ10774, FLJ12270, FLJ13373, FLJ20859, FLJ21159, FLJ22457, FLJ35036, FLJ46603, FLNC, FLOT1, FMNL1, FNBP1, FOLH1, FOXF2, FSCN1, FTL, FYB, FYN, GOS2, G6PD, GALIG, GALNT6, GATA2, GATA3, GFPT1, GIMAP5, GIT2, GJA1, GLRB, GLTSCR2, GLUL, GMDS, GNAQ, GNB2, GNB5, GOT2, GPR65, GPRASP1, GPSM3, GRP58, GSTM2, GTF3A, GTSE1, GZMA, GZMB, H1F0, H1FX, H2AFX, H3F3A, HA-1, HEXB, HIC, HIST1H4C, HK1, HLA-A, HLA-B, HLA-DRA, HMGA1, HMGN2, HMMR, HNRPA1, HNRPD, HNRPM, HOXA9, HRMT1L1, HSA9761, HSPA5, HSU79274, HTATSF1, ICAM1, ICAM2, IER3, IFI16, IFI44, IFITM2, IFITM3, IFRG28, IGFBP2, IGSF4, IL13RA2, IL21R, IL2RG, IL4R, IL6, IL6R, LOST, IL8, IMPDH2, INPP5D, INSIG1, IQGAP1, IQGAP2, IRS2, ITGA5; ITM2A, JAR102, JUNB, K-ALPHA-1, KHDRBS1, KIAA0355, KIAA0802, KIAA0877, KIAA0922, KIAA1078, KIAA1128, KIAA1393, KIFC1, LA1R1, LAMB1, LAMBS, LAT, LBR, LCK, LCP1, LCP2, LEF1, LEPRE1, LGALS1, LGALS9, LHFPL2, LNK, LOC54103, LOC55831, LOC81558, LOC94105, LONP, LOX, LOXL2, LPHN2, LPXN, LRMP, LRP12, LRRC5, LRRN3, LST1, LTB, LUM, LY9, LY96, MAGEB2, MAL, MAP1B, MAP1LC3B, MAP4K1, MAPK1, MARCKS, MAZ, MCAM, MCL1, MCM5, MCM7, MDH2, MDN1, MEF2C, MFNG, MGC17330, MGC21654, MGC2744, MGC4083, MGC8721, MGC8902, MGLL, MLPH, MPHOSPH6, MPP1, MPZL1, MRP63, MRPS2, MT1E, MT1K, MUF1, MVP, MYB, MYL9, MYO1B, NAPIL1, NAP1L2, NARF, NASP, NCOR2, NDN, NDUFAB1, NDUFS6, NFKB1A, NID2, NIPA2, NME4, NME7, NNMT, NOL5A, NOL8, NOMO2, NOTCH1, NPC1, NQO1, NRID2, NUDC, NUP210, NUP88, NVL, NXF1, OBFC1, OCRL, OGT, OXA1 L, P2RX5, P4HA1, PACAP, PAF53, PAFAH1B3, PALM2-AKAP2, PAX6, PCBP2, PCCB, PFDN5, PFN1, PFN2, PGAM1, PHEMX, PHLDA1, PIM2, PITPNC1, PLAC8, PLAGL1, PLAUR, PLCB1, PLEK2, PLEKHC1, PLOD2, PLSCR1, PNAS-4, PNMA2, POLR2F, PPAP2B, PRF1, PRG1, PRIM1, PRKCH, PRKCQ, PRKD2, PRNP, PRP19, PRPF8, PRSS23, PSCDBP, PSMB9, PSMC3, PSME2, PTGER4, PTGES2, PTOV1, PTP4A3, PTPN7, PTPNS1, PTRF, PURA, PWP1, PYGL, QKI, RAB3GAP, RAB7L1, RAB9P40, RAC2, RAFTLIN, RAG2, RAP1B, RASGRP2, RBPMS, RCN1, RFC3, RFC5, RGC32, RGS3, RHOH, RIMS3, RIOK3, RIPK2, RIS1, RNASE6, RNF144, RPL10, RPL10A, RPL12, RPL13A, RPL17, RPL18, RPL36A, RPLP0, RPLP2, RPS15, RPS19, RPS2, RPS4X, RPS4Y1, RRAS, RRAS2, RRBP1, RRM2, RUNX1, RUNX3, S100A4, SART3, SATB1, SCAP1, SCARB1, SCN3A, SEC31L2, SEC61G, SELL, SELPLG, SEMA4G, SEPT10, SEPT6, SERPINA1, SERPINB1, SERPINB6, SFRS5, SFRS6, SFRS7, SH2DIA, SH3GL3, SH3TC1, SHD1, SHMT2, SIAT1, SKB1, SKP2, SLA, SLCIA4, SLC20A1, SLC25A15, SLC25A5, SLC39A14, SLC39A6, SLC43A3, SLC4A2, SLC7A11, SLC7A6, SMAD3, SMOX, SNRPA, SNRPB, SOD2, SOX4, SP140, SPANXC, SPI1, SRF, SRM, SSA2, SSBP2, SSRP1, SSSCA1, STAG3, STAT1, STAT4, STAT5A, STC1, STC2, STOML2, T3JAM, TACC1, TACC3, TAF5, TAL1, TAP1, TARP, TBCA, TCF12, TCF4, TFDP2, TFPI, TIMM17A, TIMP1, TJP1, TK2, TM4SF1, TM4SF2, TM4SF8, TM6SF1, TMEM2, TMEM22, TMSB10, TMSNB, TNFAIP3, TNFAIP8, TNFRSF10B, TNFRSF1A, TNFRSF7, TNIK, TNPO1, TOB1, TOMM20, TOX, TPK1, TPM2, TRA@, TRA1, TRAM2, TRB@, TRD@, TRIM, TRIM14, TRIM22, TRIM28, TRIP13, TRPV2, TUBGCP3, TUSC3, TXN, TXNDC5, UBASH3A, UBE2A, UBE2L6, UBE2S, UCHL1, UCK2, UCP2, UFD1L, UGDH, ULK2, UMPS, UNG, USP34, USP4, VASP, VAV1, VLDLR, VWF, WASPIP, WBSCR20A, WBSCR20C, WHSC1, WNT5A, ZAP70, ZFP36L1, ZNF32, ZNF335, ZNF593, ZNFN1A1, and ZYX; or at least one second microRNA in at least one of said cells selected from:
ath-MIR180aNo2, Hcd102 left, Hcd111 left, Hcd115 left, Hcd120 left, Hcd142 right, Hcd145 left, Hcd148_HPR225 left, Hcd181 left, Hcd181 right, Hcd210_HPR205 right, Hcd213_HPR182 left, Hcd230 left, Hcd243 right, Hcd246 right, Hcd248 right, Hcd249 right, Hcd250 left, Hcd255 left, Hcd257 left, Hcd257 right, Hcd263 left, Hcd266 left, Hcd270 right, Hcd279 left, Hcd279 right, Hcd28_HPR39 left, Hcd28_HPR39 right, Hcd282PO right, Hcd289 left, Hcd294 left, Hcd318 right, Hcd323 left, Hcd330 right, Hcd338 left, Hcd340 left, Hcd350 right, Hcd355_HPR190 left, Hcd361 right, Hcd366 left, Hcd373 right, Hcd383 left, Hcd383 right, Hcd384 left, Hcd397 left, Hcd404 left, Hcd412 left, Hcd413 right, Hcd415 right, Hcd417 right, Hcd421 right, Hcd425 left, Hcd438 right, Hcd434 right, Hcd438 left, Hcd440_HPR257 right, Hcd444 right, Hcd447 right, Hcd448 left, Hcd498 right, Hcd503 left, Hcd511 right, Hcd512 left, Hcd514 right, Hcd517 left, Hcd517 right, Hcd530 right, Hcd536_HPR104 right, Hcd542 left, Hcd544 left, Hcd547 left, Hcd559 right, Hcd562 right, Hcd569 right, Hcd570 right, Hcd578 right, Hcd581 right, Hcd586 left, Hcd586 right, Hcd587 right, Hcd605 left, Hcd605 left, Hcd605 right, Hcd608 right, Hcd627 left, Hcd631 left, Hcd631 right, Hcd634 left, Hcd642 right, Hcd649 right, Hcd654 left, Hcd658 right, Hcd669 right, Hcd674 left, Hcd678 right, Hcd683 left, Hcd684 right, Hcd689 right, Hcd690 right, Hcd691 right, Hcd693 right, Hcd697 right, Hcd704 left, Hcd704 left, Hcd712 right, Hcd716 right, Hcd731 left, Hcd738 left, Hcd739 right, Hcd739 right, Hcd749 right, Hcd753 left, Hcd754 left, Hcd755 left, Hcd760 left, Hcd763 right, Hcd768 left, Hcd768 right, Hcd770 left, Hcd773 left, Hcd777 left, Hcd778 right, Hcd781 left, Hcd781 right, Hcd782 left, Hcd783 left, Hcd788 left, Hcd794 right, Hcd796 left, Hcd799 left, Hcd807 right, Hcd812 left, Hcd817 left, Hcd817 right, Hcd829 right, Hcd852 right, Hcd861 right, Hcd863PO right, Hcd866 right, Hcd869 left, Hcd873 left, Hcd886 right, Hcd889 right, Hcd891 right, Hcd892 left, Hcd913 right, Hcd923 left, Hcd923 right, Hcd938 left, Hcd938 right, Hcd939 right, Hcd946 left, Hcd948 right, Hcd960 left, Hcd965 left, Hcd970 left, Hcd975 left, Hcd976 right, Hcd99 right, HPR100 right, HPR129 left, HPR154 left, HPR159 left, HPR163 left, HPR169 right, HPR172 right, HPR181 left, HPR187 left, HPR199 right, HPR206 left, HPR213 right, HPR214 right, HPR220 left, HPR220 right, HPR227 right, HPR232 right, HPR233 right, HPR244 right, HPR262 left, HPR264 right, HPR266 right, HPR271 right, HPR76 right, hsa_mir490_Hcd20 right, HSHELA01, HSTRNL, HUMTRAB, HUMTRF, HUMTRN, HUMTRS, HUMTRV1A, let-7f-2-prec2, mir-001b-1-prec1, mir-001b-2-prec, mir-007-1-prec, mir-007-2-precNo2, mir-010a-precNo1, mir-015b-precNo2, mir-016a-chr13, mir-016b-chr3, mir-017-precNo1, mir-017-precNo2, mir-018-prec, mir-019a-prec, mir-019b-1-prec, mir-019b-2-prec, mir-020-prec, mir-022-prec, mir-023a-prec, mir-023b-prec, mir-024-2-prec, mir-025-prec, mir-027b-prec, mir-029c-prec, mir-032-precNo2, mir-033b-prec, mir-033-prec, mir-034-precNo1, mir-034-precNo2, mir-092-prec-13=092-1No2, mir-092-prec-X=092-2, mir-093-prec-7.1=093-1, mir-095-prec-4, mir-096-prec-7No1, mir-096-prec-7No2, mir-098-prec-X, mir-099b-prec-19No1, mir-100-1/2-prec, mir-100No1, mir-101-prec-9, mir-102-prec-1, mir-103-2-prec, mir-103-prec-5=103-1, mir-106aNo1, mir-106-prec-X, mir-107No1, mir-107-prec-10, mir-122a-prec, mir-123-precNo1, mir-123-precNo2, mir-124a-1-prec1, mir-124a-2-prec, mir-124a-3-prec, mir-125b-1, mir-125b-2-precNo2, mir-127-prec, mir-128b-precNo1, mir-128b-precNo2, mir-133a-1, mir-135-2-prec, mir-136-precNo2, mir-138-1-prec, mir-140No2, mir-143-prec, mir-144-precNo2, mir-145-prec, mir-146bNo1, mir-146-prec, mir-147-prec, mir-148aNo1, mir-148-prec, mir-149-prec, mir-150-prec, mir-153-1-prec1, mir-154-prec1 No1, mir-155-prec, mir-15aNo1, mir-16-1No1, mir-16-2No1, mir-181a-precNo1, mir-181b-1No1, mir-181b-2No1, mir-181b-precNo1, mir-181b-precNo2, mir-181c-precNo1, mir-181dNo1, mir-188-prec, mir-18bNo2, mir-191-prec, mir-192No2, mir-193bNo2, mir-194-2No1, mir-195-prec, mir-196-2-precNo2, mir-197-prec, mir-198-prec, mir-199a-1-prec, mir-199a-2-prec, mir-199b-precNo1, mir-200a-prec, mir-200bNo1, mir-200bNo2, mir-202*, mir-202-prec, mir-204-precNo2, mir-205-prec, mir-208-prec, mir-20bNo1, mir-212-precNo1, mir-212-precNo2, mir-213-precNo1, mir-214-prec, mir-215-precNo2, mir-216-precNo1, mir-219-2No1, mir-219-prec, mir-223-prec, mir-29b-1No1, mir-29b-2=102prec7.1=7.2, mir-321No1, mir-321No2, mir-324No1, mir-324No2, mir-328No1, mir-342No1, mir-361No1, mir-367No1, mir-370No1, mir-371No1, miR-373*No1, mir-375, mir-376aNo1, mir-379No1, mir-380-5p, mir-382, mir-384, mir-409-3p, mir-423No1, mir-424No2, mir-429No1, mir-429No2, mir-4323p, mir-4325p, mir-449No1, mir-450-1, mir-450-2No1, mir-483No1, mir-484, mir-487No1, mir-495No1, mir-499No2, mir-501No2, mir-503No1, mir-509No1, mir-514-1No2, mir-515-15p, mir-515-23p, mir-516-33p, mir-516-43p, mir-518e/526c, mir-519a-1/52, mir-519a-2No2, mir-519b, mir-519c/52, mir-520c/52, mir-526a-2No1, mir-526a-2No2, MPR103 right, MPR121 left, MPR121 left, MPR130 left, MPR130 right, MPR133 right, MPR141 left, MPR151 left, MPR156 left, MPR162 left, MPR174 left, MPR174 right, MPR185 right, MPR197 right, MPR203 left, MPR207 right, MPR215 left, MPR216 left, MPR224 left, MPR224 right, MPR228 left, MPR234 right, MPR237 left, MPR243 left, MPR244 right, MPR249 left, MPR254 right, MPR74 left, MPR88 right, and MPR95 left,
wherein an increase in the level of expression of said second gene or said second microRNA in at least one of said cells, relative to the level of expression of said second gene or said second microRNA in a control cell sensitive to said treatment, indicates resistance or a propensity to develop resistance to the treatment by said patient.
77. The method of claim 75, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 20 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFN1A1.
78. The method of claim 77, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 25 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFN1A1.
79. The method of claim 75, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 2300.
80. The method of claim 75, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 1, 2, 4, 6, 7, 10, 11, 16, or 24.
81. The method of claim 76, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 20 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFN1A1.
82. The method of claim 81, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 25 consecutive nucleotides of said first microRNA selected from mir-142-prec or said product of said first gene selected from ZNFNIA1.
83. The method of claim 76, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 2300.
84. The method of claim 76, wherein said at least one single-stranded oligonucleotide is substantially complementary to or substantially identical to at least 15 consecutive nucleotides of SEQ ID NO: 1, 2, 4, 6, 7, 10, 11, 16, or 24.
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